--- language: - tgj license: cc-by-4.0 task_categories: - automatic-speech-recognition pretty_name: "NE ASR Augmented Dataset -- Tagin (tgj)" tags: - augmented - ne-india - low-resource - speech - asr configs: - config_name: default data_files: - split: train path: data/train/*.parquet - split: validation path: data/validation/*.parquet - split: test path: data/test/*.parquet --- # NE ASR Augmented Dataset -- Tagin (tgj) Augmented automatic speech recognition dataset for **Tagin** (`tgj`), a Tibeto-Burman language spoken in Arunachal Pradesh, India. ## Source Augmented from [`sulabhkatiyar/ne-asr-tgj`](https://huggingface.co/datasets/sulabhkatiyar/ne-asr-tgj) (original transcribed speech data from the [ARTPARK-IISc Vaani project](https://vaani.iisc.ac.in/)). ## Language Information | Property | Value | |----------|-------| | Language | Tagin | | ISO 639-3 | `tgj` | | Family | Tibeto-Burman | | Region | Arunachal Pradesh, India | | Tonal | Yes | | Tier | A (0.12h original data) | ## Dataset Statistics - **Original training samples**: 86 - **Augmented training samples**: 258 (3x augmentation) - **Train shards**: 1 - **Estimated original duration**: ~0.1 hours - **Estimated augmented duration**: ~0.4 hours | Split | Samples | |-------|--------:| | train | 258 | | validation | 5 | | test | 2 | ## Transformations Applied Each original training sample produces **3 samples** (1 original + 2 speed + 0 pitch): - **Speed perturbation**: 0.9x, 1.1x (2 variants per sample) - **Pitch shift**: Disabled (tonal language -- pitch shift would alter lexical meaning) - **Noise augmentation**: Not applied ### SpecAugment Parameters (for training, NOT in this dataset) These parameters are consumed by the training script and are **not** baked into the audio files: - `mask_time_prob`: 0.03 - `mask_time_length`: 10 - `mask_feature_prob`: 0.0 - `mask_feature_length`: 10 - `layerdrop`: 0.0 Full augmentation config: [`configs/augmentation_config.yaml`](https://github.com/sulabhkatiyar/ne_asr/blob/main/configs/augmentation_config.yaml) ## Dataset Format - **Audio**: 16kHz mono WAV (stored as Parquet with audio bytes) - **Text**: Transcriptions - **Features**: `audio`, `text`, `language`, `augmentation` - **Augmentation labels**: `original`, `speed_0.9`, `speed_1.1` ## How to Use ```python from datasets import load_dataset # Load the full dataset ds = load_dataset("sulabhkatiyar/ne-asr-tgj-aug") # Load only the training split train = load_dataset("sulabhkatiyar/ne-asr-tgj-aug", split="train") # Filter to only original (non-augmented) samples original_only = train.filter(lambda x: x["augmentation"] == "original") # Filter to a specific augmentation type speed_09 = train.filter(lambda x: x["augmentation"] == "speed_0.9") ``` ## Original Data - Source dataset: [`sulabhkatiyar/ne-asr-tgj`](https://huggingface.co/datasets/sulabhkatiyar/ne-asr-tgj) - Project: [ARTPARK-IISc Vaani](https://vaani.iisc.ac.in/) - License: CC-BY-4.0 ## Citation If you use this dataset, please cite the Vaani project and acknowledge the augmentation pipeline.