Datasets:
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Modalities:
Audio
Text
Formats:
webdataset
Languages:
Czech
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WebDataset
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metadata
license: cc-by-2.0
task_categories:
  - automatic-speech-recognition
  - text-to-speech
language:
  - cs
size_categories:
  - 1M<n<10M

ParCzech4Speech (Unsegmented Variant)

Dataset Summary

ParCzech4Speech (Unsegmented Variant) is a large-scale Czech speech dataset derived from parliamentary recordings and official transcripts. This variant captures continuous speech segments without enforcing sentence boundaries, making it well-suited for real-world streaming ASR scenarios and speech modeling tasks that benefit from natural discourse flow.

The dataset is created using a combination of WhisperX and Wav2Vec 2.0 models for robust automatic alignment and filtering. Segments are formed by aggregating consecutive well-aligned words until encountering a speaker change or misalignment.

The dataset is derived from the ParCzech 4.0 corpus (official transcripts of parliamentary sessions) and the corresponding AudioPSP 24.01 audios.

This dataset includes rich metadata and is released under the permissive CC-BY, allowing for commercial and academic use.

🚨 Disclaimer

⚠️ Note: The current release of this dataset is partial (~80%) and does not yet include the full set of segments. The complete version containing all aligned segments will be made available soon. All summary statistics shown below (e.g. total segment count, duration) are computed on the complete dataset, not the currently available subset.

πŸ”” Note

πŸ“’ A sentence-segmented variant is also available ParCzech4Speech (Sentence-Segmented Variant), optimized for tasks requiring clean sentence boundaries and stricter control over segment quality.

Data Splits

Split Segments Hours Speakers
Train 1,311,027 2631 527
Dev 20,352 43.43 30
Test 9,127 21.37 30

Dataset Structure

Each row represents a continuous speech segment with rich metadata:

Column Description
true_text Official transcript (normalized, lowercased, punctuation removed).
rec_text Whisper-based ASR output.
speaker Speaker ID in the format Name.DateOfBirth.
dur Duration of the segment in seconds.
vert Name of the vertical file from ParCzech 4.0.
n_numbers Number of numeric tokens in true_text.
n_true_words Number of words in the segment.
seg_edit_dist Normalized Levenshtein distance between true_text and rec_text.
align_edit_dist_max Maximum edit distance among aligned word pairs.
true_char_avg_dur Average per-character duration, computed at the word level (range 0.035–1.0s/char).
start_token_id Starting token ID from the vertical format.
end_token_id Ending token ID.
wav2vec_rec Wav2Vec 2.0 decoded transcript used for verification.
wav2vec_rec_edit_dist Normalized edit distance between wav2vec_rec and rec_text.

Citation

Please cite the dataset as follows:

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