--- dataset_info: features: - name: image dtype: image - name: label dtype: string splits: - name: train num_bytes: 14474596.43478261 num_examples: 20 download_size: 18278418 dataset_size: 18275448 configs: - config_name: default data_files: - split: images path: data/images-* - split: labels path: data/labels-* license: apache-2.0 language: - en --- # DATASET SAMPLE [Duality.ai ](https://www.duality.ai/edu) just released a 1000 image dataset used to train a YOLOv8 model in object detection -- and it's 100% free! Just [create an EDU account here](https://falcon.duality.ai/auth/sign-up). This HuggingFace dataset is a 20 image and label sample, but you can get the rest at no cost by [creating a FalconCloud account](https://falcon.duality.ai/auth/sign-up). Once you verify your email, the link will redirect you to the dataset page. What makes this dataset unique, useful, and capable of bridging the Sim2Real gap? - The digital twins are not generated by AI, but instead crafted by 3D artists to be INDISTINGUISABLE to the model from the physical-world objects. This allows the training from this data to transfer into real-world applicability - The simulation software, called FalconEditor, can easily create thousands of images with varying lighting, posing, occlusions, backgrounds, camera positions, and more. This enables robust model training. - The labels are created along with the data. This not only saves large amounts of time, but also ensures the labels are incredibly accurate and reliable. ![image/png](https://cdn-uploads.huggingface.co/production/uploads/66c8dc99951843ca6762fe02/08ehub3yPYozSzxNFtVIx.png) # Dataset Structure The dataset has the following structure: ```plaintext Multiclass Object Detection Dataset/ |-- images/ | |-- 000000000.png | |-- 000000001.png | |-- ... |-- labels/ | |-- 000000000.txt | |-- 000000001.txt | |-- ... ``` ### Components 1. **Images**: RGB images of the object in `.png` format. 2. **Labels**: Text files (`.txt`) containing bounding box annotations for each class - 0 = cheerios - 1 = soup ## Licensing license: apache-2.0