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metadata
dataset_info:
  features:
    - name: audio
      dtype: audio
  splits:
    - name: train
      num_bytes: 540419096.23
      num_examples: 1155
  download_size: 532918294
  dataset_size: 540419096.23
configs:
  - config_name: default
    data_files:
      - split: train
        path: data/train-*

Dataset Card for Myrtle/CAIMAN-ASR-BackgroundNoise

This dataset provides background noise audio, suitable for noise augmentation while training Myrtle.ai's CAIMAN-ASR models.

Dataset Details

Dataset Description

Curated by: Myrtle.ai

License: Myrtle.ai's modifications to the source data are licensed under the CC BY 4.0 license. Some of the original data is under the CC BY 3.0 license; the rest is in the public domain. Please see the Source Data section below for more information.

Uses

The noise audio is intended to be combined with speech audio at signal-to-noise ratios in the range 0--60 dB.

Dataset Structure

This dataset contains 1155 audios, all in the train split.

You can access the first audio like this:

>>> import datasets
>>> noise = datasets.load_dataset("Myrtle/CAIMAN-ASR-BackgroundNoise")
>>> noise["train"][0]["audio"]["array"]
array([-0.17913818, -0.26080322, -0.1835022 , ..., -0.26644897,
       -0.2434082 , -0.25830078])

All of the data is 16 kHz and single-channel.

Dataset Creation

Source Data

  • 843 of the audios originate from Free Sound, as collected for the MUSAN dataset. All these audios are in the public domain.
  • The remaining 312 audios were collected from YouTube videos marked as CC BY 3.0. Specific attributions are here

Data Collection and Processing

Any audio with understandable human speech was filtered out.

Random 20s segments of the YouTube audio were selected.

Personal and Sensitive Information

Contains no personal information

Bias, Risks, and Limitations

This dataset contains a large variety of background noises, but not all types of background noise are included. If your target validation dataset has a type of background noise not included here, then using this noise dataset for augmentation may not help.

If your training dataset already contains significant amounts of background noise, then training with noise augmentation may not be necessary.

Dataset Card Contact

hello@myrtle.ai