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Microsoft releases VibeVoice, generates 90-minute, 4-speaker audio

microsoft.github.io
3 points·by watsonmusic·11 bulan yang lalu·3 comments

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watsonmusic
·10 bulan yang lalu·discuss
it's not oss
watsonmusic
·10 bulan yang lalu·discuss
bonus usage
watsonmusic
·10 bulan yang lalu·discuss
11labs is facing a real competitor
watsonmusic
·10 bulan yang lalu·discuss
genius
watsonmusic
·10 bulan yang lalu·discuss
this model is superb
watsonmusic
·10 bulan yang lalu·discuss
Microsoft is cool
watsonmusic
·10 bulan yang lalu·discuss
yes the best
watsonmusic
·10 bulan yang lalu·discuss
one of the best models built by Microsoft
watsonmusic
·11 bulan yang lalu·discuss
https://github.com/microsoft/VibeVoice
watsonmusic
·11 bulan yang lalu·discuss
https://huggingface.co/microsoft/VibeVoice-1.5B
watsonmusic
·11 bulan yang lalu·discuss
VibeVoice is a novel framework designed for generating expressive, long-form, multi-speaker conversational audio, such as podcasts, from text. It addresses significant challenges in traditional Text-to-Speech (TTS) systems, particularly in scalability, speaker consistency, and natural turn-taking. A core innovation of VibeVoice is its use of continuous speech tokenizers (Acoustic and Semantic) operating at an ultra-low frame rate of 7.5 Hz. These tokenizers efficiently preserve audio fidelity while significantly boosting computational efficiency for processing long sequences. VibeVoice employs a next-token diffusion framework, leveraging a Large Language Model (LLM) to understand textual context and dialogue flow, and a diffusion head to generate high-fidelity acoustic details. The model can synthesize speech up to 90 minutes long with up to 4 distinct speakers, surpassing the typical 1-2 speaker limits of many prior models.
watsonmusic
·tahun lalu·discuss
cannot wait seeing how it goes beyond the current llm training pipeline
watsonmusic
·tahun lalu·discuss
it could be adaptive. only high-value tokens were allocated with more compute
watsonmusic
·tahun lalu·discuss
A new scaling paradigm finally comes out!
watsonmusic
·tahun lalu·discuss
14b model performs comparably with 32b size. the improvement is huge
watsonmusic
·2 tahun yang lalu·discuss
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watsonmusic
·2 tahun yang lalu·discuss
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watsonmusic
·2 tahun yang lalu·discuss
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watsonmusic
·2 tahun yang lalu·discuss
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watsonmusic
·2 tahun yang lalu·discuss
negative values can enhance the expressibility