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1
+ ---
2
+ annotations_creators:
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+ - crowdsourced
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+ - expert-generated
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+ language_creators:
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+ - found
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+ language:
8
+ - en
9
+ license:
10
+ - bsd-3-clause
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+ multilinguality:
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+ - monolingual
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+ size_categories:
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+ - 10K<n<100K
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+ source_datasets:
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+ - extended|ade20k
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+ task_categories:
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+ - image-segmentation
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+ task_ids:
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+ - instance-segmentation
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+ paperswithcode_id: ade20k
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+ pretty_name: MIT Scene Parsing Benchmark
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+ tags:
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+ - scene-parsing
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+ dataset_info:
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+ - config_name: scene_parsing
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+ features:
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+ - name: image
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+ dtype: image
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+ - name: annotation
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+ dtype: image
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+ - name: scene_category
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+ dtype:
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+ class_label:
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+ names:
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+ '0': airport_terminal
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+ '1': art_gallery
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+ '2': badlands
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+ '3': ball_pit
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+ '4': bathroom
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+ '5': beach
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+ '6': bedroom
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+ '7': booth_indoor
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+ '8': botanical_garden
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+ '9': bridge
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+ '10': bullring
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+ '11': bus_interior
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+ '12': butte
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+ '13': canyon
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+ '14': casino_outdoor
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+ '15': castle
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+ '16': church_outdoor
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+ '17': closet
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+ '18': coast
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+ '19': conference_room
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+ '20': construction_site
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+ '21': corral
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+ '22': corridor
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+ '23': crosswalk
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+ '24': day_care_center
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+ '25': sand
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+ '26': elevator_interior
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+ '27': escalator_indoor
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+ '28': forest_road
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+ '29': gangplank
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+ '30': gas_station
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+ '31': golf_course
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+ '34': hayfield
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+ '35': heath
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+ '36': hoodoo
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+ '41': kiosk_indoor
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+ '42': kitchen
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+ '43': landfill
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+ '45': lido_deck_outdoor
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+ '46': living_room
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+ '47': locker_room
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+ '48': market_outdoor
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+ '49': mountain_snowy
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+ '50': office
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+ '59': palace_hall
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+ '60': pantry
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+ '61': patio
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+ '62': phone_booth
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+ '63': establishment
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+ '64': poolroom_home
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+ '65': quonset_hut_outdoor
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+ '66': rice_paddy
103
+ '67': sandbox
104
+ '68': shopfront
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+ '69': skyscraper
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+ '70': stone_circle
107
+ '71': subway_interior
108
+ '72': platform
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+ '73': supermarket
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+ '74': swimming_pool_outdoor
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+ '75': television_studio
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+ '76': indoor_procenium
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+ '77': train_railway
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+ '78': coral_reef
115
+ '79': viaduct
116
+ '80': wave
117
+ '81': wind_farm
118
+ '82': bottle_storage
119
+ '83': abbey
120
+ '84': access_road
121
+ '85': air_base
122
+ '86': airfield
123
+ '87': airlock
124
+ '88': airplane_cabin
125
+ '89': airport
126
+ '90': entrance
127
+ '91': airport_ticket_counter
128
+ '92': alcove
129
+ '93': alley
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+ '94': amphitheater
131
+ '95': amusement_arcade
132
+ '96': amusement_park
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+ '97': anechoic_chamber
134
+ '98': apartment_building_outdoor
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+ '99': apse_indoor
136
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138
+ '102': aquatic_theater
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+ '103': aqueduct
140
+ '104': arcade
141
+ '105': arch
142
+ '106': archaelogical_excavation
143
+ '107': archive
144
+ '108': basketball
145
+ '109': football
146
+ '110': hockey
147
+ '111': performance
148
+ '112': rodeo
149
+ '113': soccer
150
+ '114': armory
151
+ '115': army_base
152
+ '116': arrival_gate_indoor
153
+ '117': arrival_gate_outdoor
154
+ '118': art_school
155
+ '119': art_studio
156
+ '120': artists_loft
157
+ '121': assembly_line
158
+ '122': athletic_field_indoor
159
+ '123': athletic_field_outdoor
160
+ '124': atrium_home
161
+ '125': atrium_public
162
+ '126': attic
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+ '127': auditorium
164
+ '128': auto_factory
165
+ '129': auto_mechanics_indoor
166
+ '130': auto_mechanics_outdoor
167
+ '131': auto_racing_paddock
168
+ '132': auto_showroom
169
+ '133': backstage
170
+ '134': backstairs
171
+ '135': badminton_court_indoor
172
+ '136': badminton_court_outdoor
173
+ '137': baggage_claim
174
+ '138': shop
175
+ '139': exterior
176
+ '140': balcony_interior
177
+ '141': ballroom
178
+ '142': bamboo_forest
179
+ '143': bank_indoor
180
+ '144': bank_outdoor
181
+ '145': bank_vault
182
+ '146': banquet_hall
183
+ '147': baptistry_indoor
184
+ '148': baptistry_outdoor
185
+ '149': bar
186
+ '150': barbershop
187
+ '151': barn
188
+ '152': barndoor
189
+ '153': barnyard
190
+ '154': barrack
191
+ '155': baseball_field
192
+ '156': basement
193
+ '157': basilica
194
+ '158': basketball_court_indoor
195
+ '159': basketball_court_outdoor
196
+ '160': bathhouse
197
+ '161': batters_box
198
+ '162': batting_cage_indoor
199
+ '163': batting_cage_outdoor
200
+ '164': battlement
201
+ '165': bayou
202
+ '166': bazaar_indoor
203
+ '167': bazaar_outdoor
204
+ '168': beach_house
205
+ '169': beauty_salon
206
+ '170': bedchamber
207
+ '171': beer_garden
208
+ '172': beer_hall
209
+ '173': belfry
210
+ '174': bell_foundry
211
+ '175': berth
212
+ '176': berth_deck
213
+ '177': betting_shop
214
+ '178': bicycle_racks
215
+ '179': bindery
216
+ '180': biology_laboratory
217
+ '181': bistro_indoor
218
+ '182': bistro_outdoor
219
+ '183': bleachers_indoor
220
+ '184': bleachers_outdoor
221
+ '185': boardwalk
222
+ '186': boat_deck
223
+ '187': boathouse
224
+ '188': bog
225
+ '189': bomb_shelter_indoor
226
+ '190': bookbindery
227
+ '191': bookstore
228
+ '192': bow_window_indoor
229
+ '193': bow_window_outdoor
230
+ '194': bowling_alley
231
+ '195': box_seat
232
+ '196': boxing_ring
233
+ '197': breakroom
234
+ '198': brewery_indoor
235
+ '199': brewery_outdoor
236
+ '200': brickyard_indoor
237
+ '201': brickyard_outdoor
238
+ '202': building_complex
239
+ '203': building_facade
240
+ '204': bullpen
241
+ '205': burial_chamber
242
+ '206': bus_depot_indoor
243
+ '207': bus_depot_outdoor
244
+ '208': bus_shelter
245
+ '209': bus_station_indoor
246
+ '210': bus_station_outdoor
247
+ '211': butchers_shop
248
+ '212': cabana
249
+ '213': cabin_indoor
250
+ '214': cabin_outdoor
251
+ '215': cafeteria
252
+ '216': call_center
253
+ '217': campsite
254
+ '218': campus
255
+ '219': natural
256
+ '220': urban
257
+ '221': candy_store
258
+ '222': canteen
259
+ '223': car_dealership
260
+ '224': backseat
261
+ '225': frontseat
262
+ '226': caravansary
263
+ '227': cardroom
264
+ '228': cargo_container_interior
265
+ '229': airplane
266
+ '230': boat
267
+ '231': freestanding
268
+ '232': carport_indoor
269
+ '233': carport_outdoor
270
+ '234': carrousel
271
+ '235': casino_indoor
272
+ '236': catacomb
273
+ '237': cathedral_indoor
274
+ '238': cathedral_outdoor
275
+ '239': catwalk
276
+ '240': cavern_indoor
277
+ '241': cavern_outdoor
278
+ '242': cemetery
279
+ '243': chalet
280
+ '244': chaparral
281
+ '245': chapel
282
+ '246': checkout_counter
283
+ '247': cheese_factory
284
+ '248': chemical_plant
285
+ '249': chemistry_lab
286
+ '250': chicken_coop_indoor
287
+ '251': chicken_coop_outdoor
288
+ '252': chicken_farm_indoor
289
+ '253': chicken_farm_outdoor
290
+ '254': childs_room
291
+ '255': choir_loft_interior
292
+ '256': church_indoor
293
+ '257': circus_tent_indoor
294
+ '258': circus_tent_outdoor
295
+ '259': city
296
+ '260': classroom
297
+ '261': clean_room
298
+ '262': cliff
299
+ '263': booth
300
+ '264': room
301
+ '265': clock_tower_indoor
302
+ '266': cloister_indoor
303
+ '267': cloister_outdoor
304
+ '268': clothing_store
305
+ '269': coast_road
306
+ '270': cockpit
307
+ '271': coffee_shop
308
+ '272': computer_room
309
+ '273': conference_center
310
+ '274': conference_hall
311
+ '275': confessional
312
+ '276': control_room
313
+ '277': control_tower_indoor
314
+ '278': control_tower_outdoor
315
+ '279': convenience_store_indoor
316
+ '280': convenience_store_outdoor
317
+ '281': corn_field
318
+ '282': cottage
319
+ '283': cottage_garden
320
+ '284': courthouse
321
+ '285': courtroom
322
+ '286': courtyard
323
+ '287': covered_bridge_interior
324
+ '288': crawl_space
325
+ '289': creek
326
+ '290': crevasse
327
+ '291': library
328
+ '292': cybercafe
329
+ '293': dacha
330
+ '294': dairy_indoor
331
+ '295': dairy_outdoor
332
+ '296': dam
333
+ '297': dance_school
334
+ '298': darkroom
335
+ '299': delicatessen
336
+ '300': dentists_office
337
+ '301': department_store
338
+ '302': departure_lounge
339
+ '303': vegetation
340
+ '304': desert_road
341
+ '305': diner_indoor
342
+ '306': diner_outdoor
343
+ '307': dinette_home
344
+ '308': vehicle
345
+ '309': dining_car
346
+ '310': dining_hall
347
+ '311': dining_room
348
+ '312': dirt_track
349
+ '313': discotheque
350
+ '314': distillery
351
+ '315': ditch
352
+ '316': dock
353
+ '317': dolmen
354
+ '318': donjon
355
+ '319': doorway_indoor
356
+ '320': doorway_outdoor
357
+ '321': dorm_room
358
+ '322': downtown
359
+ '323': drainage_ditch
360
+ '324': dress_shop
361
+ '325': dressing_room
362
+ '326': drill_rig
363
+ '327': driveway
364
+ '328': driving_range_indoor
365
+ '329': driving_range_outdoor
366
+ '330': drugstore
367
+ '331': dry_dock
368
+ '332': dugout
369
+ '333': earth_fissure
370
+ '334': editing_room
371
+ '335': electrical_substation
372
+ '336': elevated_catwalk
373
+ '337': door
374
+ '338': freight_elevator
375
+ '339': elevator_lobby
376
+ '340': elevator_shaft
377
+ '341': embankment
378
+ '342': embassy
379
+ '343': engine_room
380
+ '344': entrance_hall
381
+ '345': escalator_outdoor
382
+ '346': escarpment
383
+ '347': estuary
384
+ '348': excavation
385
+ '349': exhibition_hall
386
+ '350': fabric_store
387
+ '351': factory_indoor
388
+ '352': factory_outdoor
389
+ '353': fairway
390
+ '354': farm
391
+ '355': fastfood_restaurant
392
+ '356': fence
393
+ '357': cargo_deck
394
+ '358': ferryboat_indoor
395
+ '359': passenger_deck
396
+ '360': cultivated
397
+ '361': wild
398
+ '362': field_road
399
+ '363': fire_escape
400
+ '364': fire_station
401
+ '365': firing_range_indoor
402
+ '366': firing_range_outdoor
403
+ '367': fish_farm
404
+ '368': fishmarket
405
+ '369': fishpond
406
+ '370': fitting_room_interior
407
+ '371': fjord
408
+ '372': flea_market_indoor
409
+ '373': flea_market_outdoor
410
+ '374': floating_dry_dock
411
+ '375': flood
412
+ '376': florist_shop_indoor
413
+ '377': florist_shop_outdoor
414
+ '378': fly_bridge
415
+ '379': food_court
416
+ '380': football_field
417
+ '381': broadleaf
418
+ '382': needleleaf
419
+ '383': forest_fire
420
+ '384': forest_path
421
+ '385': formal_garden
422
+ '386': fort
423
+ '387': fortress
424
+ '388': foundry_indoor
425
+ '389': foundry_outdoor
426
+ '390': fountain
427
+ '391': freeway
428
+ '392': funeral_chapel
429
+ '393': funeral_home
430
+ '394': furnace_room
431
+ '395': galley
432
+ '396': game_room
433
+ '397': garage_indoor
434
+ '398': garage_outdoor
435
+ '399': garbage_dump
436
+ '400': gasworks
437
+ '401': gate
438
+ '402': gatehouse
439
+ '403': gazebo_interior
440
+ '404': general_store_indoor
441
+ '405': general_store_outdoor
442
+ '406': geodesic_dome_indoor
443
+ '407': geodesic_dome_outdoor
444
+ '408': ghost_town
445
+ '409': gift_shop
446
+ '410': glacier
447
+ '411': glade
448
+ '412': gorge
449
+ '413': granary
450
+ '414': great_hall
451
+ '415': greengrocery
452
+ '416': greenhouse_indoor
453
+ '417': greenhouse_outdoor
454
+ '418': grotto
455
+ '419': guardhouse
456
+ '420': gulch
457
+ '421': gun_deck_indoor
458
+ '422': gun_deck_outdoor
459
+ '423': gun_store
460
+ '424': hacienda
461
+ '425': hallway
462
+ '426': handball_court
463
+ '427': hangar_indoor
464
+ '428': hangar_outdoor
465
+ '429': hardware_store
466
+ '430': hat_shop
467
+ '431': hatchery
468
+ '432': hayloft
469
+ '433': hearth
470
+ '434': hedge_maze
471
+ '435': hedgerow
472
+ '436': heliport
473
+ '437': herb_garden
474
+ '438': highway
475
+ '439': hill
476
+ '440': home_office
477
+ '441': home_theater
478
+ '442': hospital
479
+ '443': hospital_room
480
+ '444': hot_spring
481
+ '445': hot_tub_indoor
482
+ '446': hot_tub_outdoor
483
+ '447': hotel_outdoor
484
+ '448': hotel_breakfast_area
485
+ '449': hotel_room
486
+ '450': hunting_lodge_indoor
487
+ '451': hut
488
+ '452': ice_cream_parlor
489
+ '453': ice_floe
490
+ '454': ice_skating_rink_indoor
491
+ '455': ice_skating_rink_outdoor
492
+ '456': iceberg
493
+ '457': igloo
494
+ '458': imaret
495
+ '459': incinerator_indoor
496
+ '460': incinerator_outdoor
497
+ '461': industrial_area
498
+ '462': industrial_park
499
+ '463': inn_indoor
500
+ '464': inn_outdoor
501
+ '465': irrigation_ditch
502
+ '466': islet
503
+ '467': jacuzzi_indoor
504
+ '468': jacuzzi_outdoor
505
+ '469': jail_indoor
506
+ '470': jail_outdoor
507
+ '471': jail_cell
508
+ '472': japanese_garden
509
+ '473': jetty
510
+ '474': jewelry_shop
511
+ '475': junk_pile
512
+ '476': junkyard
513
+ '477': jury_box
514
+ '478': kasbah
515
+ '479': kennel_indoor
516
+ '480': kennel_outdoor
517
+ '481': kindergarden_classroom
518
+ '482': kiosk_outdoor
519
+ '483': kitchenette
520
+ '484': lab_classroom
521
+ '485': labyrinth_indoor
522
+ '486': labyrinth_outdoor
523
+ '487': lagoon
524
+ '488': artificial
525
+ '489': landing
526
+ '490': landing_deck
527
+ '491': laundromat
528
+ '492': lava_flow
529
+ '493': lavatory
530
+ '494': lawn
531
+ '495': lean-to
532
+ '496': lecture_room
533
+ '497': legislative_chamber
534
+ '498': levee
535
+ '499': library_outdoor
536
+ '500': lido_deck_indoor
537
+ '501': lift_bridge
538
+ '502': lighthouse
539
+ '503': limousine_interior
540
+ '504': liquor_store_indoor
541
+ '505': liquor_store_outdoor
542
+ '506': loading_dock
543
+ '507': lobby
544
+ '508': lock_chamber
545
+ '509': loft
546
+ '510': lookout_station_indoor
547
+ '511': lookout_station_outdoor
548
+ '512': lumberyard_indoor
549
+ '513': lumberyard_outdoor
550
+ '514': machine_shop
551
+ '515': manhole
552
+ '516': mansion
553
+ '517': manufactured_home
554
+ '518': market_indoor
555
+ '519': marsh
556
+ '520': martial_arts_gym
557
+ '521': mastaba
558
+ '522': maternity_ward
559
+ '523': mausoleum
560
+ '524': medina
561
+ '525': menhir
562
+ '526': mesa
563
+ '527': mess_hall
564
+ '528': mezzanine
565
+ '529': military_hospital
566
+ '530': military_hut
567
+ '531': military_tent
568
+ '532': mine
569
+ '533': mineshaft
570
+ '534': mini_golf_course_indoor
571
+ '535': mini_golf_course_outdoor
572
+ '536': mission
573
+ '537': dry
574
+ '538': water
575
+ '539': mobile_home
576
+ '540': monastery_indoor
577
+ '541': monastery_outdoor
578
+ '542': moon_bounce
579
+ '543': moor
580
+ '544': morgue
581
+ '545': mosque_indoor
582
+ '546': mosque_outdoor
583
+ '547': motel
584
+ '548': mountain
585
+ '549': mountain_path
586
+ '550': mountain_road
587
+ '551': movie_theater_indoor
588
+ '552': movie_theater_outdoor
589
+ '553': mudflat
590
+ '554': museum_indoor
591
+ '555': museum_outdoor
592
+ '556': music_store
593
+ '557': music_studio
594
+ '558': misc
595
+ '559': natural_history_museum
596
+ '560': naval_base
597
+ '561': newsroom
598
+ '562': newsstand_indoor
599
+ '563': newsstand_outdoor
600
+ '564': nightclub
601
+ '565': nuclear_power_plant_indoor
602
+ '566': nuclear_power_plant_outdoor
603
+ '567': nunnery
604
+ '568': nursery
605
+ '569': nursing_home
606
+ '570': oasis
607
+ '571': oast_house
608
+ '572': observatory_indoor
609
+ '573': observatory_outdoor
610
+ '574': observatory_post
611
+ '575': ocean
612
+ '576': office_building
613
+ '577': office_cubicles
614
+ '578': oil_refinery_indoor
615
+ '579': oil_refinery_outdoor
616
+ '580': oilrig
617
+ '581': operating_room
618
+ '582': optician
619
+ '583': organ_loft_interior
620
+ '584': orlop_deck
621
+ '585': ossuary
622
+ '586': outcropping
623
+ '587': outhouse_indoor
624
+ '588': outhouse_outdoor
625
+ '589': overpass
626
+ '590': oyster_bar
627
+ '591': oyster_farm
628
+ '592': acropolis
629
+ '593': aircraft_carrier_object
630
+ '594': amphitheater_indoor
631
+ '595': archipelago
632
+ '596': questionable
633
+ '597': assembly_hall
634
+ '598': assembly_plant
635
+ '599': awning_deck
636
+ '600': back_porch
637
+ '601': backdrop
638
+ '602': backroom
639
+ '603': backstage_outdoor
640
+ '604': backstairs_indoor
641
+ '605': backwoods
642
+ '606': ballet
643
+ '607': balustrade
644
+ '608': barbeque
645
+ '609': basin_outdoor
646
+ '610': bath_indoor
647
+ '611': bath_outdoor
648
+ '612': bathhouse_outdoor
649
+ '613': battlefield
650
+ '614': bay
651
+ '615': booth_outdoor
652
+ '616': bottomland
653
+ '617': breakfast_table
654
+ '618': bric-a-brac
655
+ '619': brooklet
656
+ '620': bubble_chamber
657
+ '621': buffet
658
+ '622': bulkhead
659
+ '623': bunk_bed
660
+ '624': bypass
661
+ '625': byroad
662
+ '626': cabin_cruiser
663
+ '627': cargo_helicopter
664
+ '628': cellar
665
+ '629': chair_lift
666
+ '630': cocktail_lounge
667
+ '631': corner
668
+ '632': country_house
669
+ '633': country_road
670
+ '634': customhouse
671
+ '635': dance_floor
672
+ '636': deck-house_boat_deck_house
673
+ '637': deck-house_deck_house
674
+ '638': dining_area
675
+ '639': diving_board
676
+ '640': embrasure
677
+ '641': entranceway_indoor
678
+ '642': entranceway_outdoor
679
+ '643': entryway_outdoor
680
+ '644': estaminet
681
+ '645': farm_building
682
+ '646': farmhouse
683
+ '647': feed_bunk
684
+ '648': field_house
685
+ '649': field_tent_indoor
686
+ '650': field_tent_outdoor
687
+ '651': fire_trench
688
+ '652': fireplace
689
+ '653': flashflood
690
+ '654': flatlet
691
+ '655': floating_dock
692
+ '656': flood_plain
693
+ '657': flowerbed
694
+ '658': flume_indoor
695
+ '659': flying_buttress
696
+ '660': foothill
697
+ '661': forecourt
698
+ '662': foreshore
699
+ '663': front_porch
700
+ '664': garden
701
+ '665': gas_well
702
+ '666': glen
703
+ '667': grape_arbor
704
+ '668': grove
705
+ '669': guardroom
706
+ '670': guesthouse
707
+ '671': gymnasium_outdoor
708
+ '672': head_shop
709
+ '673': hen_yard
710
+ '674': hillock
711
+ '675': housing_estate
712
+ '676': housing_project
713
+ '677': howdah
714
+ '678': inlet
715
+ '679': insane_asylum
716
+ '680': outside
717
+ '681': juke_joint
718
+ '682': jungle
719
+ '683': kraal
720
+ '684': laboratorywet
721
+ '685': landing_strip
722
+ '686': layby
723
+ '687': lean-to_tent
724
+ '688': loge
725
+ '689': loggia_outdoor
726
+ '690': lower_deck
727
+ '691': luggage_van
728
+ '692': mansard
729
+ '693': meadow
730
+ '694': meat_house
731
+ '695': megalith
732
+ '696': mens_store_outdoor
733
+ '697': mental_institution_indoor
734
+ '698': mental_institution_outdoor
735
+ '699': military_headquarters
736
+ '700': millpond
737
+ '701': millrace
738
+ '702': natural_spring
739
+ '703': nursing_home_outdoor
740
+ '704': observation_station
741
+ '705': open-hearth_furnace
742
+ '706': operating_table
743
+ '707': outbuilding
744
+ '708': palestra
745
+ '709': parkway
746
+ '710': patio_indoor
747
+ '711': pavement
748
+ '712': pawnshop_outdoor
749
+ '713': pinetum
750
+ '714': piste_road
751
+ '715': pizzeria_outdoor
752
+ '716': powder_room
753
+ '717': pumping_station
754
+ '718': reception_room
755
+ '719': rest_stop
756
+ '720': retaining_wall
757
+ '721': rift_valley
758
+ '722': road
759
+ '723': rock_garden
760
+ '724': rotisserie
761
+ '725': safari_park
762
+ '726': salon
763
+ '727': saloon
764
+ '728': sanatorium
765
+ '729': science_laboratory
766
+ '730': scrubland
767
+ '731': scullery
768
+ '732': seaside
769
+ '733': semidesert
770
+ '734': shelter
771
+ '735': shelter_deck
772
+ '736': shelter_tent
773
+ '737': shore
774
+ '738': shrubbery
775
+ '739': sidewalk
776
+ '740': snack_bar
777
+ '741': snowbank
778
+ '742': stage_set
779
+ '743': stall
780
+ '744': stateroom
781
+ '745': store
782
+ '746': streetcar_track
783
+ '747': student_center
784
+ '748': study_hall
785
+ '749': sugar_refinery
786
+ '750': sunroom
787
+ '751': supply_chamber
788
+ '752': t-bar_lift
789
+ '753': tannery
790
+ '754': teahouse
791
+ '755': threshing_floor
792
+ '756': ticket_window_indoor
793
+ '757': tidal_basin
794
+ '758': tidal_river
795
+ '759': tiltyard
796
+ '760': tollgate
797
+ '761': tomb
798
+ '762': tract_housing
799
+ '763': trellis
800
+ '764': truck_stop
801
+ '765': upper_balcony
802
+ '766': vestibule
803
+ '767': vinery
804
+ '768': walkway
805
+ '769': war_room
806
+ '770': washroom
807
+ '771': water_fountain
808
+ '772': water_gate
809
+ '773': waterscape
810
+ '774': waterway
811
+ '775': wetland
812
+ '776': widows_walk_indoor
813
+ '777': windstorm
814
+ '778': packaging_plant
815
+ '779': pagoda
816
+ '780': paper_mill
817
+ '781': park
818
+ '782': parking_garage_indoor
819
+ '783': parking_garage_outdoor
820
+ '784': parking_lot
821
+ '785': parlor
822
+ '786': particle_accelerator
823
+ '787': party_tent_indoor
824
+ '788': party_tent_outdoor
825
+ '789': pasture
826
+ '790': pavilion
827
+ '791': pawnshop
828
+ '792': pedestrian_overpass_indoor
829
+ '793': penalty_box
830
+ '794': pet_shop
831
+ '795': pharmacy
832
+ '796': physics_laboratory
833
+ '797': piano_store
834
+ '798': picnic_area
835
+ '799': pier
836
+ '800': pig_farm
837
+ '801': pilothouse_indoor
838
+ '802': pilothouse_outdoor
839
+ '803': pitchers_mound
840
+ '804': pizzeria
841
+ '805': planetarium_indoor
842
+ '806': planetarium_outdoor
843
+ '807': plantation_house
844
+ '808': playground
845
+ '809': playroom
846
+ '810': plaza
847
+ '811': podium_indoor
848
+ '812': podium_outdoor
849
+ '813': police_station
850
+ '814': pond
851
+ '815': pontoon_bridge
852
+ '816': poop_deck
853
+ '817': porch
854
+ '818': portico
855
+ '819': portrait_studio
856
+ '820': postern
857
+ '821': power_plant_outdoor
858
+ '822': print_shop
859
+ '823': priory
860
+ '824': promenade
861
+ '825': promenade_deck
862
+ '826': pub_indoor
863
+ '827': pub_outdoor
864
+ '828': pulpit
865
+ '829': putting_green
866
+ '830': quadrangle
867
+ '831': quicksand
868
+ '832': quonset_hut_indoor
869
+ '833': racecourse
870
+ '834': raceway
871
+ '835': raft
872
+ '836': railroad_track
873
+ '837': railway_yard
874
+ '838': rainforest
875
+ '839': ramp
876
+ '840': ranch
877
+ '841': ranch_house
878
+ '842': reading_room
879
+ '843': reception
880
+ '844': recreation_room
881
+ '845': rectory
882
+ '846': recycling_plant_indoor
883
+ '847': refectory
884
+ '848': repair_shop
885
+ '849': residential_neighborhood
886
+ '850': resort
887
+ '851': rest_area
888
+ '852': restaurant
889
+ '853': restaurant_kitchen
890
+ '854': restaurant_patio
891
+ '855': restroom_indoor
892
+ '856': restroom_outdoor
893
+ '857': revolving_door
894
+ '858': riding_arena
895
+ '859': river
896
+ '860': road_cut
897
+ '861': rock_arch
898
+ '862': roller_skating_rink_indoor
899
+ '863': roller_skating_rink_outdoor
900
+ '864': rolling_mill
901
+ '865': roof
902
+ '866': roof_garden
903
+ '867': root_cellar
904
+ '868': rope_bridge
905
+ '869': roundabout
906
+ '870': roundhouse
907
+ '871': rubble
908
+ '872': ruin
909
+ '873': runway
910
+ '874': sacristy
911
+ '875': salt_plain
912
+ '876': sand_trap
913
+ '877': sandbar
914
+ '878': sauna
915
+ '879': savanna
916
+ '880': sawmill
917
+ '881': schoolhouse
918
+ '882': schoolyard
919
+ '883': science_museum
920
+ '884': scriptorium
921
+ '885': sea_cliff
922
+ '886': seawall
923
+ '887': security_check_point
924
+ '888': server_room
925
+ '889': sewer
926
+ '890': sewing_room
927
+ '891': shed
928
+ '892': shipping_room
929
+ '893': shipyard_outdoor
930
+ '894': shoe_shop
931
+ '895': shopping_mall_indoor
932
+ '896': shopping_mall_outdoor
933
+ '897': shower
934
+ '898': shower_room
935
+ '899': shrine
936
+ '900': signal_box
937
+ '901': sinkhole
938
+ '902': ski_jump
939
+ '903': ski_lodge
940
+ '904': ski_resort
941
+ '905': ski_slope
942
+ '906': sky
943
+ '907': skywalk_indoor
944
+ '908': skywalk_outdoor
945
+ '909': slum
946
+ '910': snowfield
947
+ '911': massage_room
948
+ '912': mineral_bath
949
+ '913': spillway
950
+ '914': sporting_goods_store
951
+ '915': squash_court
952
+ '916': stable
953
+ '917': baseball
954
+ '918': stadium_outdoor
955
+ '919': stage_indoor
956
+ '920': stage_outdoor
957
+ '921': staircase
958
+ '922': starting_gate
959
+ '923': steam_plant_outdoor
960
+ '924': steel_mill_indoor
961
+ '925': storage_room
962
+ '926': storm_cellar
963
+ '927': street
964
+ '928': strip_mall
965
+ '929': strip_mine
966
+ '930': student_residence
967
+ '931': submarine_interior
968
+ '932': sun_deck
969
+ '933': sushi_bar
970
+ '934': swamp
971
+ '935': swimming_hole
972
+ '936': swimming_pool_indoor
973
+ '937': synagogue_indoor
974
+ '938': synagogue_outdoor
975
+ '939': taxistand
976
+ '940': taxiway
977
+ '941': tea_garden
978
+ '942': tearoom
979
+ '943': teashop
980
+ '944': television_room
981
+ '945': east_asia
982
+ '946': mesoamerican
983
+ '947': south_asia
984
+ '948': western
985
+ '949': tennis_court_indoor
986
+ '950': tennis_court_outdoor
987
+ '951': tent_outdoor
988
+ '952': terrace_farm
989
+ '953': indoor_round
990
+ '954': indoor_seats
991
+ '955': theater_outdoor
992
+ '956': thriftshop
993
+ '957': throne_room
994
+ '958': ticket_booth
995
+ '959': tobacco_shop_indoor
996
+ '960': toll_plaza
997
+ '961': tollbooth
998
+ '962': topiary_garden
999
+ '963': tower
1000
+ '964': town_house
1001
+ '965': toyshop
1002
+ '966': track_outdoor
1003
+ '967': trading_floor
1004
+ '968': trailer_park
1005
+ '969': train_interior
1006
+ '970': train_station_outdoor
1007
+ '971': station
1008
+ '972': tree_farm
1009
+ '973': tree_house
1010
+ '974': trench
1011
+ '975': trestle_bridge
1012
+ '976': tundra
1013
+ '977': rail_indoor
1014
+ '978': rail_outdoor
1015
+ '979': road_indoor
1016
+ '980': road_outdoor
1017
+ '981': turkish_bath
1018
+ '982': ocean_deep
1019
+ '983': ocean_shallow
1020
+ '984': utility_room
1021
+ '985': valley
1022
+ '986': van_interior
1023
+ '987': vegetable_garden
1024
+ '988': velodrome_indoor
1025
+ '989': velodrome_outdoor
1026
+ '990': ventilation_shaft
1027
+ '991': veranda
1028
+ '992': vestry
1029
+ '993': veterinarians_office
1030
+ '994': videostore
1031
+ '995': village
1032
+ '996': vineyard
1033
+ '997': volcano
1034
+ '998': volleyball_court_indoor
1035
+ '999': volleyball_court_outdoor
1036
+ '1000': voting_booth
1037
+ '1001': waiting_room
1038
+ '1002': walk_in_freezer
1039
+ '1003': warehouse_indoor
1040
+ '1004': warehouse_outdoor
1041
+ '1005': washhouse_indoor
1042
+ '1006': washhouse_outdoor
1043
+ '1007': watchtower
1044
+ '1008': water_mill
1045
+ '1009': water_park
1046
+ '1010': water_tower
1047
+ '1011': water_treatment_plant_indoor
1048
+ '1012': water_treatment_plant_outdoor
1049
+ '1013': block
1050
+ '1014': cascade
1051
+ '1015': cataract
1052
+ '1016': fan
1053
+ '1017': plunge
1054
+ '1018': watering_hole
1055
+ '1019': weighbridge
1056
+ '1020': wet_bar
1057
+ '1021': wharf
1058
+ '1022': wheat_field
1059
+ '1023': whispering_gallery
1060
+ '1024': widows_walk_interior
1061
+ '1025': windmill
1062
+ '1026': window_seat
1063
+ '1027': barrel_storage
1064
+ '1028': winery
1065
+ '1029': witness_stand
1066
+ '1030': woodland
1067
+ '1031': workroom
1068
+ '1032': workshop
1069
+ '1033': wrestling_ring_indoor
1070
+ '1034': wrestling_ring_outdoor
1071
+ '1035': yard
1072
+ '1036': youth_hostel
1073
+ '1037': zen_garden
1074
+ '1038': ziggurat
1075
+ '1039': zoo
1076
+ '1040': forklift
1077
+ '1041': hollow
1078
+ '1042': hutment
1079
+ '1043': pueblo
1080
+ '1044': vat
1081
+ '1045': perfume_shop
1082
+ '1046': steel_mill_outdoor
1083
+ '1047': orchestra_pit
1084
+ '1048': bridle_path
1085
+ '1049': lyceum
1086
+ '1050': one-way_street
1087
+ '1051': parade_ground
1088
+ '1052': pump_room
1089
+ '1053': recycling_plant_outdoor
1090
+ '1054': chuck_wagon
1091
+ splits:
1092
+ - name: train
1093
+ num_bytes: 8468086
1094
+ num_examples: 20210
1095
+ - name: test
1096
+ num_bytes: 744607
1097
+ num_examples: 3352
1098
+ - name: validation
1099
+ num_bytes: 838032
1100
+ num_examples: 2000
1101
+ download_size: 1179202534
1102
+ dataset_size: 10050725
1103
+ - config_name: instance_segmentation
1104
+ features:
1105
+ - name: image
1106
+ dtype: image
1107
+ - name: annotation
1108
+ dtype: image
1109
+ splits:
1110
+ - name: train
1111
+ num_bytes: 862611544
1112
+ num_examples: 20210
1113
+ - name: test
1114
+ num_bytes: 212493928
1115
+ num_examples: 3352
1116
+ - name: validation
1117
+ num_bytes: 87502294
1118
+ num_examples: 2000
1119
+ download_size: 1197393920
1120
+ dataset_size: 1162607766
1121
+ ---
1122
+
1123
+ # Dataset Card for MIT Scene Parsing Benchmark
1124
+
1125
+ ## Table of Contents
1126
+ - [Table of Contents](#table-of-contents)
1127
+ - [Dataset Description](#dataset-description)
1128
+ - [Dataset Summary](#dataset-summary)
1129
+ - [Supported Tasks and Leaderboards](#supported-tasks-and-leaderboards)
1130
+ - [Languages](#languages)
1131
+ - [Dataset Structure](#dataset-structure)
1132
+ - [Data Instances](#data-instances)
1133
+ - [Data Fields](#data-fields)
1134
+ - [Data Splits](#data-splits)
1135
+ - [Dataset Creation](#dataset-creation)
1136
+ - [Curation Rationale](#curation-rationale)
1137
+ - [Source Data](#source-data)
1138
+ - [Annotations](#annotations)
1139
+ - [Personal and Sensitive Information](#personal-and-sensitive-information)
1140
+ - [Considerations for Using the Data](#considerations-for-using-the-data)
1141
+ - [Social Impact of Dataset](#social-impact-of-dataset)
1142
+ - [Discussion of Biases](#discussion-of-biases)
1143
+ - [Other Known Limitations](#other-known-limitations)
1144
+ - [Additional Information](#additional-information)
1145
+ - [Dataset Curators](#dataset-curators)
1146
+ - [Licensing Information](#licensing-information)
1147
+ - [Citation Information](#citation-information)
1148
+ - [Contributions](#contributions)
1149
+
1150
+ ## Dataset Description
1151
+
1152
+ - **Homepage:** [MIT Scene Parsing Benchmark homepage](http://sceneparsing.csail.mit.edu/)
1153
+ - **Repository:** [Scene Parsing repository (Caffe/Torch7)](https://github.com/CSAILVision/sceneparsing),[Scene Parsing repository (PyTorch)](https://github.com/CSAILVision/semantic-segmentation-pytorch) and [Instance Segmentation repository](https://github.com/CSAILVision/placeschallenge/tree/master/instancesegmentation)
1154
+ - **Paper:** [Scene Parsing through ADE20K Dataset](http://people.csail.mit.edu/bzhou/publication/scene-parse-camera-ready.pdf) and [Semantic Understanding of Scenes through ADE20K Dataset](https://arxiv.org/abs/1608.05442)
1155
+ - **Leaderboard:** [MIT Scene Parsing Benchmark leaderboard](http://sceneparsing.csail.mit.edu/#:~:text=twice%20per%20week.-,leaderboard,-Organizers)
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+ - **Point of Contact:** [Bolei Zhou](mailto:[email protected])
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+
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+ ### Dataset Summary
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+
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+ Scene parsing is the task of segmenting and parsing an image into different image regions associated with semantic categories, such as sky, road, person, and bed. MIT Scene Parsing Benchmark (SceneParse150) provides a standard training and evaluation platform for the algorithms of scene parsing. The data for this benchmark comes from ADE20K Dataset which contains more than 20K scene-centric images exhaustively annotated with objects and object parts. Specifically, the benchmark is divided into 20K images for training, 2K images for validation, and another batch of held-out images for testing. There are in total 150 semantic categories included for evaluation, which include e.g. sky, road, grass, and discrete objects like person, car, bed. Note that there are non-uniform distribution of objects occuring in the images, mimicking a more natural object occurrence in daily scene.
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+
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+ The goal of this benchmark is to segment and parse an image into different image regions associated with semantic categories, such as sky, road, person, and bedThis benchamark is similar to semantic segmentation tasks in COCO and Pascal Dataset, but the data is more scene-centric and with a diverse range of object categories. The data for this benchmark comes from ADE20K Dataset which contains more than 20K scene-centric images exhaustively annotated with objects and object parts.
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+
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+ ### Supported Tasks and Leaderboards
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+
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+ - `scene-parsing`: The goal of this task is to segment the whole image densely into semantic classes (image regions), where each pixel is assigned a class label such as the region of *tree* and the region of *building*.
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+ [The leaderboard](http://sceneparsing.csail.mit.edu/#:~:text=twice%20per%20week.-,leaderboard,-Organizers) for this task ranks the models by considering the mean of the pixel-wise accuracy and class-wise IoU as the final score. Pixel-wise accuracy indicates the ratio of pixels which are correctly predicted, while class-wise IoU indicates the Intersection of Union of pixels averaged over all the 150 semantic categories. Refer to the [Development Kit](https://github.com/CSAILVision/sceneparsing) for the detail.
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+
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+ - `instance-segmentation`: The goal of this task is to detect the object instances inside an image and further generate the precise segmentation masks of the objects. Its difference compared to the task of scene parsing is that in scene parsing there is no instance concept for the segmented regions, instead in instance segmentation if there are three persons in the scene, the network is required to segment each one of the person regions. This task doesn't have an active leaderboard. The performance of the instance segmentation algorithms is evaluated by Average Precision (AP, or mAP), following COCO evaluation metrics. For each image, at most 255 top-scoring instance masks are taken across all categories. Each instance mask prediction is only considered if its IoU with ground truth is above a certain threshold. There are 10 IoU thresholds of 0.50:0.05:0.95 for evaluation. The final AP is averaged across 10 IoU thresholds and 100 categories. You can refer to COCO evaluation page for more explanation: http://mscoco.org/dataset/#detections-eval
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+
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+ ### Languages
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+
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+ English.
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+
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+ ## Dataset Structure
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+
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+ ### Data Instances
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+
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+ A data point comprises an image and its annotation mask, which is `None` in the testing set. The `scene_parsing` configuration has an additional `scene_category` field.
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+
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+ #### `scene_parsing`
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+
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+ ```
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+ {
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+ 'image': <PIL.JpegImagePlugin.JpegImageFile image mode=RGB size=683x512 at 0x1FF32A3EDA0>,
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+ 'annotation': <PIL.PngImagePlugin.PngImageFile image mode=L size=683x512 at 0x1FF32E5B978>,
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+ 'scene_category': 0
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+ }
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+ ```
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+
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+ #### `instance_segmentation`
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+
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+ ```
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+ {
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+ 'image': <PIL.JpegImagePlugin.JpegImageFile image mode=RGB size=256x256 at 0x20B51B5C400>,
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+ 'annotation': <PIL.PngImagePlugin.PngImageFile image mode=RGB size=256x256 at 0x20B57051B38>
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+ }
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+ ```
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+
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+ ### Data Fields
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+
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+ #### `scene_parsing`
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+
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+ - `image`: A `PIL.Image.Image` object containing the image. Note that when accessing the image column: `dataset[0]["image"]` the image file is automatically decoded. Decoding of a large number of image files might take a significant amount of time. Thus it is important to first query the sample index before the `"image"` column, *i.e.* `dataset[0]["image"]` should **always** be preferred over `dataset["image"][0]`.
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+ - `annotation`: A `PIL.Image.Image` object containing the annotation mask.
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+ - `scene_category`: A scene category for the image (e.g. `airport_terminal`, `canyon`, `mobile_home`).
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+
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+ > **Note**: annotation masks contain labels ranging from 0 to 150, where 0 refers to "other objects". Those pixels are not considered in the official evaluation. Refer to [this file](https://github.com/CSAILVision/sceneparsing/blob/master/objectInfo150.csv) for the information about the labels of the 150 semantic categories, including indices, pixel ratios and names.
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+
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+ #### `instance_segmentation`
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+
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+ - `image`: A `PIL.Image.Image` object containing the image. Note that when accessing the image column: `dataset[0]["image"]` the image file is automatically decoded. Decoding of a large number of image files might take a significant amount of time. Thus it is important to first query the sample index before the `"image"` column, *i.e.* `dataset[0]["image"]` should **always** be preferred over `dataset["image"][0]`.
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+ - `annotation`: A `PIL.Image.Image` object containing the annotation mask.
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+
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+ > **Note**: in the instance annotation masks, the R(ed) channel encodes category ID, and the G(reen) channel encodes instance ID. Each object instance has a unique instance ID regardless of its category ID. In the dataset, all images have <256 object instances. Refer to [this file (train split)](https://github.com/CSAILVision/placeschallenge/blob/master/instancesegmentation/instanceInfo100_train.txt) and to [this file (validation split)](https://github.com/CSAILVision/placeschallenge/blob/master/instancesegmentation/instanceInfo100_val.txt) for the information about the labels of the 100 semantic categories. To find the mapping between the semantic categories for `instance_segmentation` and `scene_parsing`, refer to [this file](https://github.com/CSAILVision/placeschallenge/blob/master/instancesegmentation/categoryMapping.txt).
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+
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+ ### Data Splits
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+
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+ The data is split into training, test and validation set. The training data contains 20210 images, the testing data contains 3352 images and the validation data contains 2000 images.
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+
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+ ## Dataset Creation
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+
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+ ### Curation Rationale
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+
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+ The rationale from the paper for the ADE20K dataset from which this benchmark originates:
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+
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+ > Semantic understanding of visual scenes is one of the holy grails of computer vision. Despite efforts of the community in data collection, there are still few image datasets covering a wide range of scenes and object categories with pixel-wise annotations for scene understanding. In this work, we present a densely annotated dataset ADE20K, which spans diverse annotations of scenes, objects, parts of objects, and
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+ in some cases even parts of parts.
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+
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+ > The motivation of this work is to collect a dataset that has densely annotated images (every pixel has a semantic label) with a large and an unrestricted open vocabulary. The
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+ images in our dataset are manually segmented in great detail, covering a diverse set of scenes, object and object part categories. The challenge for collecting such annotations is finding reliable annotators, as well as the fact that labeling is difficult if the class list is not defined in advance. On the other hand, open vocabulary naming also suffers from naming inconsistencies across different annotators. In contrast,
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+ our dataset was annotated by a single expert annotator, providing extremely detailed and exhaustive image annotations. On average, our annotator labeled 29 annotation segments per image, compared to the 16 segments per image labeled by external annotators (like workers from Amazon Mechanical Turk). Furthermore, the data consistency and quality are much higher than that of external annotators.
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+
1234
+ ### Source Data
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+
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+ #### Initial Data Collection and Normalization
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+
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+ Images come from the LabelMe, SUN datasets, and Places and were selected to cover the 900 scene categories defined in the SUN database.
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+
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+ This benchmark was built by selecting the top 150 objects ranked by their total pixel ratios from the ADE20K dataset. As the original images in the ADE20K dataset have various sizes, for simplicity those large-sized images were rescaled to make their minimum heights or widths as 512. Among the 150 objects, there are 35 stuff classes (i.e., wall, sky, road) and 115 discrete objects (i.e., car, person, table). The annotated pixels of the 150 objects occupy 92.75% of all the pixels in the dataset, where the stuff classes occupy 60.92%, and discrete objects occupy 31.83%.
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+
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+ #### Who are the source language producers?
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+
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+ The same as in the LabelMe, SUN datasets, and Places datasets.
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+
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+ ### Annotations
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+
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+ #### Annotation process
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+
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+ Annotation process for the ADE20K dataset:
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+
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+ > **Image Annotation.** For our dataset, we are interested in having a diverse set of scenes with dense annotations of all the objects present. Images come from the LabelMe, SUN datasets, and Places and were selected to cover the 900 scene categories defined in the SUN database. Images were annotated by a single expert worker using the LabelMe interface. Fig. 2 shows a snapshot of the annotation interface and one fully segmented image. The worker provided three types of annotations: object segments with names, object parts, and attributes. All object instances are segmented independently so that the dataset could be used to train and evaluate detection or segmentation algorithms. Datasets such as COCO, Pascal or Cityscape start by defining a set of object categories of interest. However, when labeling all the objects in a scene, working with a predefined list of objects is not possible as new categories
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+ appear frequently (see fig. 5.d). Here, the annotator created a dictionary of visual concepts where new classes were added constantly to ensure consistency in object naming. Object parts are associated with object instances. Note that parts can have parts too, and we label these associations as well. For example, the ‘rim’ is a part of a ‘wheel’, which in turn is part of a ‘car’. A ‘knob’ is a part of a ‘door’
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+ that can be part of a ‘cabinet’. The total part hierarchy has a depth of 3. The object and part hierarchy is in the supplementary materials.
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+
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+ > **Annotation Consistency.** Defining a labeling protocol is relatively easy when the labeling task is restricted to a fixed list of object classes, however it becomes challenging when the class list is openended. As the goal is to label all the objects within each image, the list of classes grows unbounded. >Many object classes appear only a few times across the entire collection of images. However, those rare >object classes cannot be ignored as they might be important elements for the interpretation of the scene. >Labeling in these conditions becomes difficult because we need to keep a growing list of all the object >classes in order to have a consistent naming across the entire dataset. Despite the annotator’s best effort, >the process is not free of noise. To analyze the annotation consistency we took a subset of 61 randomly >chosen images from the validation set, then asked our annotator to annotate them again (there is a time difference of six months). One expects that there are some differences between the two annotations. A few examples are shown in Fig 3. On average, 82.4% of the pixels got the same label. The remaining 17.6% of pixels had some errors for which we grouped into three error types as follows:
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+ >
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+ > • Segmentation quality: Variations in the quality of segmentation and outlining of the object boundary. One typical source of error arises when segmenting complex objects such as buildings and trees, which can be segmented with different degrees of precision. 5.7% of the pixels had this type of error.
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+ >
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+ > • Object naming: Differences in object naming (due to ambiguity or similarity between concepts, for instance calling a big car a ‘car’ in one segmentation and a ‘truck’ in the another one, or a ‘palm tree’ a‘tree’. 6.0% of the pixels had naming issues. These errors can be reduced by defining a very precise terminology, but this becomes much harder with a large growing vocabulary.
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+ >
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+ > • Segmentation quantity: Missing objects in one of the two segmentations. There is a very large number of objects in each image and some images might be annotated more thoroughly than others. For example, in the third column of Fig 3 the annotator missed some small objects in different annotations. 5.9% of the pixels are due to missing labels. A similar issue existed in segmentation datasets such as the Berkeley Image segmentation dataset.
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+ >
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+ > The median error values for the three error types are: 4.8%, 0.3% and 2.6% showing that the mean value is dominated by a few images, and that the most common type of error is segmentation quality.
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+ To further compare the annotation done by our single expert annotator and the AMT-like annotators, 20 images
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+ from the validation set are annotated by two invited external annotators, both with prior experience in image labeling. The first external annotator had 58.5% of inconsistent pixels compared to the segmentation provided by our annotator, and the second external annotator had 75% of the inconsistent pixels. Many of these inconsistencies are due to the poor quality of the segmentations provided by external annotators (as it has been observed with AMT which requires multiple verification steps for quality control). For the
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+ best external annotator (the first one), 7.9% of pixels have inconsistent segmentations (just slightly worse than our annotator), 14.9% have inconsistent object naming and 35.8% of the pixels correspond to missing objects, which is due to the much smaller number of objects annotated by the external annotator in comparison with the ones annotated by our expert annotator. The external annotators labeled on average 16 segments per image while our annotator provided 29 segments per image.
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+
1269
+ #### Who are the annotators?
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+
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+ Three expert annotators and the AMT-like annotators.
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+
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+ ### Personal and Sensitive Information
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+
1275
+ [More Information Needed]
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+
1277
+ ## Considerations for Using the Data
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+
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+ ### Social Impact of Dataset
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+
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+ [More Information Needed]
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+
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+ ### Discussion of Biases
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+
1285
+ [More Information Needed]
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+
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+ ### Other Known Limitations
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+
1289
+ Refer to the `Annotation Consistency` subsection of `Annotation Process`.
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+
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+ ## Additional Information
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+
1293
+ ### Dataset Curators
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+
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+ Bolei Zhou, Hang Zhao, Xavier Puig, Sanja Fidler, Adela Barriuso and Antonio Torralba.
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+
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+ ### Licensing Information
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+
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+ The MIT Scene Parsing Benchmark dataset is licensed under a [BSD 3-Clause License](https://github.com/CSAILVision/sceneparsing/blob/master/LICENSE).
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+
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+ ### Citation Information
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+
1303
+ ```bibtex
1304
+ @inproceedings{zhou2017scene,
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+ title={Scene Parsing through ADE20K Dataset},
1306
+ author={Zhou, Bolei and Zhao, Hang and Puig, Xavier and Fidler, Sanja and Barriuso, Adela and Torralba, Antonio},
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+ booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
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+ year={2017}
1309
+ }
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+
1311
+ @article{zhou2016semantic,
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+ title={Semantic understanding of scenes through the ade20k dataset},
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+ author={Zhou, Bolei and Zhao, Hang and Puig, Xavier and Fidler, Sanja and Barriuso, Adela and Torralba, Antonio},
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+ journal={arXiv preprint arXiv:1608.05442},
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+ year={2016}
1316
+ }
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+ ```
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+
1319
+ ### Contributions
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+
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+ Thanks to [@mariosasko](https://github.com/mariosasko) for adding this dataset.