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  • Vinta Chen
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  • !2350

Update README.md

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Open van requested to merge github/fork/liufeigit/liufeigit-patch-1 into master Feb 13, 2023
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Add audioFlux: A library for audio and music analysis, feature extraction.

What is this Python project?

A library for audio and music analysis and feature extraction, which supports dozens of time-frequency analysis and transformation methods, as well as hundreds of corresponding time-domain and frequency-domain feature combinations, can be provided to the deep learning network for training, and can be used to study the classification, separation, music information retrieval (MIR), ASR and other tasks in the audio field.

What's the difference between this Python project and similar ones?

  • Systematic and multi-dimensional feature extraction and combination can be flexibly used for various task research and analysis
  • The performance is efficient, the core is mostly implemented in C, and FFT hardware acceleration based on different platforms is convenient for large-scale data feature extraction.
  • It is applicable to the mobile end and supports real-time calculation of audio stream at the mobile end.

Anyone who agrees with this pull request could submit an Approve review to it.

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Source branch: github/fork/liufeigit/liufeigit-patch-1