gibbona1/neal
NEAL (Nature+Energy Audio Labeller) is an open-source interactive audio data annotation tool.
This tool helps researchers and citizen scientists efficiently mark specific sounds or events within audio recordings, especially for ecological studies. You input your audio files, and it provides an interactive environment to identify and label sounds like bird calls. This is ideal for anyone studying wildlife acoustics or monitoring environmental soundscapes.
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Use this if you need a user-friendly way to precisely annotate audio files for ecological research or citizen science projects.
Not ideal if you primarily work with non-audio data or require highly specialized sound analysis features beyond labeling.
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Language
R
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Last pushed
Apr 07, 2025
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