mnpinto/audiotagging2019
6th place solution to Freesound Audio Tagging 2019 kaggle competition
This tool helps scientists, researchers, or sound engineers automatically categorize audio recordings by their content. You input a collection of audio files (like WAVs), and it outputs a CSV file listing each audio clip with predicted tags describing the sounds present, such as 'Speech', 'Music', 'Animal', or 'Vehicle'. This allows for efficient organization and analysis of large audio datasets.
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Use this if you need to automatically tag a large collection of audio files with descriptive labels based on their content.
Not ideal if you require real-time audio analysis or an interactive interface for tagging; this is primarily for batch processing and generating submission files for competitions.
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25
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Language
Python
License
MIT
Category
Last pushed
Jun 15, 2020
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