diff --git a/docs/vibevoice-asr.md b/docs/vibevoice-asr.md index 7038370..811e80b 100644 --- a/docs/vibevoice-asr.md +++ b/docs/vibevoice-asr.md @@ -3,22 +3,20 @@ [](https://huggingface.co/microsoft/VibeVoice-ASR) [](https://aka.ms/vibevoice-asr) -**VibeVoice-ASR** is the latest addition to the **VibeVoice** family. While the original VibeVoice / VibeVoice-Realtime focused on expressive TTS, **VibeVoice-ASR** focuses on understanding long-form speech with high precision and rich metadata. - -It is a unified speech-to-text model designed to handle **1-hour long-form audio** in a single pass, generating structured transcriptions containing **Who (Speaker), When (Timestamps), and What (Content)**, with support for **User-Customized Context**. +**VibeVoice-ASR** is a unified speech-to-text model designed to handle **60-minute long-form audio** in a single pass, generating structured transcriptions containing **Who (Speaker), When (Timestamps), and What (Content)**, with support for **Customized Hotwords**. ## 🔥 Key Features -- **🕒 60-min Single-Pass Processing**: - Unlike conventional ASR models that slice audio into short chunks (often losing global context), VibeVoice ASR accepts up to **60 minutes** of continuous audio input within 64K length. This ensures consistent speaker tracking and semantic coherence across the entire hour. +- **🕒 60-minute Single-Pass Processing**: + Unlike conventional ASR models that slice audio into short chunks (often losing global context), VibeVoice ASR accepts up to **60 minutes** of continuous audio input within 64K token length. This ensures consistent speaker tracking and semantic coherence across the entire hour. -- **👤 Optional Context Injection**: - Users can provide customized context (e.g., specific names, technical terms, or background info) to guide the recognition process, significantly improving accuracy on domain-specific content. +- **👤 Customized Hotwords**: + Users can provide customized hotwords (e.g., specific names, technical terms, or background info) to guide the recognition process, significantly improving accuracy on domain-specific content. - **📝 Rich Transcription (Who, When, What)**: - The model performs ASR, Diarization, and Timestamping simultaneously. The output is a structured sequence indicating *who* said *what* at *which time*. + The model jointly performs ASR, diarization, and timestamping, producing a structured output that indicates *who* said *what* and *when*. -[Try it here.](https://aka.ms/vibevoice-asr) +**Demo:** [VibeVoice-ASR-Demo](https://aka.ms/vibevoice-asr) ## 🏗️ Model Architecture @@ -28,9 +26,9 @@ It is a unified speech-to-text model designed to handle **1-hour long-form audio ## Evaluation
-
-
-
+
+
+