Papers
arxiv:1911.01255

pyannote.audio: neural building blocks for speaker diarization

Published on Nov 4, 2019
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Abstract

A Python-based open-source toolkit for speaker diarization that utilizes PyTorch to provide trainable neural building blocks for voice activity detection, speaker change detection, overlapped speech detection, and speaker embedding with pre-trained models achieving state-of-the-art performance.

We introduce pyannote.audio, an open-source toolkit written in Python for speaker diarization. Based on PyTorch machine learning framework, it provides a set of trainable end-to-end neural building blocks that can be combined and jointly optimized to build speaker diarization pipelines. pyannote.audio also comes with pre-trained models covering a wide range of domains for voice activity detection, speaker change detection, overlapped speech detection, and speaker embedding -- reaching state-of-the-art performance for most of them.

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