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Dataset Description

This multi-species dataset was customized to benchmark k-NN retrieval and cluster separation tecniques on Human and Songbird vocalizations.

Download Dataset

from huggingface_hub import snapshot_download
snapshot_download('anonymous-submission000/vocsim', local_dir = "data/vocsim", repo_type="dataset" )

For more usage details, please refer to the GitHub repository: https://anonymous.4open.science/anonymize/neural_embeddings-6EE5

Data Fields

  1. Subset: Specifies the subset/category of the dataset. It can indicate whether the sample is from humans or songbirds, and possibly more detailed categorization.
  2. Audio: Contains the audio sample.
  3. Label: Represents the label or class of the audio clip, indicating the type of vocalization or sound.
  4. Speaker: Identifies the speaker or source of the vocalization in the case of human datasets, or the individual bird in the case of songbird datasets.

Human Datasets

  1. AMI: The AMI Meeting Corpus comprises 100 hours of multi-modal meeting recordings, including audio data for utterances, words, and vocal sounds, alongside detailed speaker metadata.
  2. TIMIT: The TIMIT dataset contains manual phonetic transcriptions of utterances read by 630 English speakers with various dialects.
  3. VocImSet: The Vocal Imitation Set contains recordings of 236 unique sound sources being imitated by 248 speakers.
  4. VocalSketch: The Vocal Sketch Dataset contains two sets of 10'705 and 5'700 imitations respectively of 240 sounds.

Songbird Datasets

  1. DAS: The Deep Audio Segmenter Dataset features single male Bengalese finch songs, including 473 vocalizations of 6 vocalization types.
  2. Tomka: The Gold-Standard Zebrafinch dataset contains 48,059 vocalizations of 36 vocalization types from 4 zebra finches.
  3. Nicholson: The Bengalese finch song repository includes songs of four Bengalese finches recorded in the Sober lab at Emory University and manually clustered by two authors.
  4. Elie: Vocal repertoires from zebra finches, collected between 2011 and 2014 at the University of California Berkeley by Julie E Elie. This dataset contains 3,500 vocalizations from 50 individuals and 65 vocalization types.

Contact

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