8000 GitHub - ysdede/ten-vad: A Low-Latency, Lightweight and High-Performance Streaming VAD https://huggingface.co/spaces/TEN-framework/ten-agent-demo
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Welcome to TEN

TEN is a collection of open-source projects for building real-time, multimodal conversational voice agents, including TEN Framework , TEN VAD , TEN Turn Detection , TEN Agent, TMAN Designer, TEN Portal , and more.


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Introduction

TEN VAD is a real-time voice activity detection system designed for enterprise use, providing accurate frame-level speech activity detection. It shows superior precision compared to both WebRTC VAD and Silero VAD, which are commonly used in the industry. Additionally, TEN VAD offers lower computational complexity and reduced memory usage compared to Silero VAD. Meanwhile, the architecture's temporal efficiency enables rapid voice activity detection, significantly reducing end-to-end response and turn detection latency in conversational AI systems.

Key Features

1. High-Performance:

The precision-recall curves comparing the performance of WebRTC VAD (pitch-based), Silero VAD, and TEN VAD are shown below. The evaluation is conducted on the precisely manually annotated testset. The audio files are from librispeech, gigaspeech, DNS Challenge etc. As demonstrated, TEN VAD achieves the best performance. Additionally, cross-validation experiments conducted on large internal real-world datasets demonstrate the reproducibility of these findings. The testset with annotated labels is released in directory "testset" of this repository.


Note that the default threshold of 0.5 is used to generate binary speech indicators (0 for non-speech signal, 1 for speech signal). This threshold needs to be tuned according to your domain-specific task. The precision-recall curve can be obtained by executing the following script on Linux x64. The output figure will be saved in the same directory as the script.

cd ./examples
python plot_pr_curves.py

2. Agent-Friendly:

As illustrated in the figure below, TEN VAD rapidly detects speech-to-non-speech transitions, whereas Silero VAD suffers from a delay of several hundred milliseconds, resulting in increased end-to-end latency in human-agent interaction systems. In addition, as demonstrated in the 6.5s-7.0s audio segment, Silero VAD fails to identify short silent durations between adjacent speech segments.


3. Lightweight:

We evaluated the RTF (Real-Time Factor) across five distinct platforms, each equipped with varying CPUs. TEN VAD demonstrates much lower computational complexity and smaller library size than Silero VAD.

Platform CPU RTF Lib Size
TEN VAD Silero VAD TEN VAD Silero VAD
Linux AMD Ryzen 9 5900X 12-Core 0.0150 / 306KB 2.16MB(JIT) / 2.22MB(ONNX)
Intel(R) Xeon(R) Platinum 8253 0.0136
Intel(R) Xeon(R) Gold 6348 CPU @ 2.60GHz 0.0086 0.0127
Windows Intel i7-10710U 0.0150 / 464KB(x86) / 508KB(x64)
macOS M1 0.0160 731KB
Android Galaxy J6+ (32bit, 425) 0.0570 373KB(v7a) / 532KB(v8a)
Oppo A3s (450) 0.0490
iOS iPhone6 (A8) 0.0210 320KB
iPhone8 (A11) 0.0050

4. Multiple programming languages and platforms:

TEN VAD provides cross-platform C compatibility across five operating systems (Linux x64, Windows, macOS, Android, iOS), with Python bindings optimized for Linux x64.

5. Supproted sampling rate and hop size:

TEN VAD operates on 16kHz audio input with configurable hop sizes (optimized frame configurations: 160/256 samples=10/16ms). Other sampling rates must be resampled to 16kHz.

Installation

git clone https://github.com/TEN-framework/ten-vad.git

Quick Start

The project supports five major platforms with dynamic library linking.

Platform Dynamic Lib Supported Arch Interface Language Header Comment
Linux libten_vad.so x64 Python, C ten_vad.h
ten_vad.py
Windows ten_vad.dll x64, x86 C
macOS ten_vad.framework arm64, x86_64 C
Android libten_vad.so arm64-v8a, armeabi-v7a C
iOS ten_vad.framework arm64 C 1. not simulator
2. not iPad

Python Usage

1. Linux

Requirements

  • numpy (Version 1.17.4/1.26.4 verified)

  • scipy (Version >= 1.5.0)

  • scikit-learn (Version 1.2.2/1.5.0 verified, for plotting PR curves)

  • matplotlib (Version 3.1.3/3.10.0 verified, for plotting PR curves)

  • torchaudio (Version 2.2.2 verified, for plotting PR curves)

  • Python version 3.8.19/3.10.14 verified

Note: You could use other versions of above packages, but we didn't test other versions.


The lib only depend on numpy, you have to install the dependency via requirements.txt:

pip install -r requirements.txt

For running demo or plotting PR curves, you have to install the dependencies:

pip install -r ./examples/requirements.txt


Usage

Note: For usage in python, you can either use it by git clone or pip.

By using git clone:
  1. Clone the repository
git clone https://github.com/TEN-framework/ten-vad.git
  1. Enter examples directory
cd ./examples
  1. Test
python test.py s0724-s0730.wav out.txt

By using pip:
  1. Install via pip
pip install -U --force-reinstall -v git+https://github.com/TEN-framework/ten-vad.git
  1. Write your own use cases and import the class, the attributes of class TenVAD you can refer to ten_vad.py
from ten_vad import TenVad

C Usage

Build Scripts

Located in examples/ directory:

  • Linux: build-and-deploy-linux.sh
  • Windows: build-and-deploy-windows.bat
  • macOS: build-and-deploy-mac.sh
  • Android: build-and-deploy-android.sh
  • iOS: build-and-deploy-ios.sh

Dynamic Library Configuration

Runtime library path configuration:

  • Linux/Android: LD_LIBRARY_PATH
  • macOS: DYLD_FRAMEWORK_PATH
  • Windows: DLL in executable directory or system PATH

Customization

  • Modify platform-specific build scripts
  • Adjust CMakeLists.txt
  • Configure toolchain and architecture settings

Overview of Usage

  • Navigate to examples/
  • Execute platform-specific build script
  • Configure dynamic library path
  • Run demo with sample audio s0724-s0730.wav
  • Processed results saved to out.txt

The detailed usage methods of each platform are as follows

1. Linux

Requirements
  • Clang (e.g. 6.0.0-1ubuntu2 verified)
  • CMake
  • Terminal
Usage
1) cd ./examples
2) ./build-and-deploy-linux.sh

2. Windows

Requirements
  • Visual Studio (2017, 2019, 2022 verified)
  • CMake (3.26.0-rc6 verified)
  • Terminal (MINGW64 or powershell)
Usage
1) cd ./examples
2) Configure "build-and-deploy-windows.bat" with your preferred:
    - Architecture (default: x64)
    - Visual Studio version (default: 2019)
3) ./build-and-deploy-windows.bat

3. macOS

Requirements
  • Xcode (15.2 verified)
  • CMake (3.19.2 verified)
Usage
1) cd ./examples
2) Configure "build-and-deploy-mac.sh" with your target architecture:
  - Default: arm64 (Apple Silicon)
  - Alternative: x86_64 (Intel)
3) ./build-and-deploy-mac.sh

4. Android

Requirements
  • NDK (r25b, macOS verified)
  • CMake (3.19.2, macOS verified)
  • adb (1.0.41, macOS verified)
Usage
1) cd ./examples
2) export ANDROID_NDK=/path/to/android-ndk  # Replace it with your NDK installation path
3) Configure "build-and-deploy-android.sh" with your build settings:
  - Architecture: arm64-v8a (default) or armeabi-v7a
  - Toolchain: aarch64-linux-android-clang (default) or custom NDK toolchain
4) ./build-and-deploy-android.sh

5. iOS

Requirements

Xcode (15.2, macOS verified) CMake (3.19.2, macOS verified)

Usage
  1. Enter examples directory
cd ./examples
  1. Creates Xcode project files for iOS build
./build-and-deploy-ios.sh
  1. Follow the steps below to build and test on iOS device:

    3.1. Use Xcode to open .xcodeproj files: a) cd ./build-ios, b) open ./ten_vad_demo.xcodeproj

    3.2. In Xcode IDE, select ten_vad_demo target (should check: Edit Scheme → Run → Release), then select your iOS Device (not simulator).

    3.3. Drag ten_vad/lib/iOS/ten_vad.framework to "Frameworks, Libraries, and Embedded Content"

    • (in TARGETS → ten_vad_demo → ten_vad_demo → General, should set Embed to "Embed & Sign").

    • or add it directly in this way: "Frameworks, Libraries, and Embedded Content" → "+" → Add Other... → Add Files →...

    • Note: If this step is not completed, you may encounter the following runtime error: "dyld: Library not loaded: @rpath/ten_vad.framework/ten_vad".

    3.4. Configure iOS device Signature

    • in TARGETS → ten_vad_demo → Signing & Capabilities → Signing

      • Modify Bundle Identifier: modify "com.yourcompany" to yours;

      • Specify Provisioning Profile

    • In TARGETS → ten_vad_demo → Build Settings → Signing → Code Signing Identity:

      • Specify your Certification

    3.5. Build in Xcode and run demo on your device.


TEN Ecosystem

Project Preview
🏚️ TEN Framework
TEN is an open-source framework for real-time, multimodal conversational AI.

TEN VAD
TEN VAD is a low-latency, lightweight and high-performance streaming voice activity detector (VAD).

️TEN Turn Detection
TEN is for full-duplex dialogue communication.

🎙️ TEN Agent
TEN Agent is a showcase of TEN Framewrok.

🎨 TMAN Designer beta
TMAN Designer is low/no code option to make a voice agent with easy to use workflow UI.

📒 TEN Portal
The official site of TEN framework, it has documentation and blog.


Citations

@misc{TEN VAD,
  author = {TEN Team},
  title = {TEN VAD: A Low-Latency, Lightweight and High-Performance Streaming Voice Activity Detector (VAD)},
  year = {2025},
  publisher = {GitHub},
  journal = {GitHub repository},
  howpublished = {https://github.com/TEN-framework/ten-vad.git},
  email = {developer@ten.ai}
}

License

This project is Apache 2.0 licensed.

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  • Python 62.8%
  • C 37.2%
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