Speaker Log Implementation Based on PyTorch (Speaker Separation)
This article introduces the speaker diarization feature of the VoiceprintRecognition_Pytorch framework implemented based on PyTorch, which supports various advanced models and data preprocessing methods. By executing the `infer_speaker_diarization.py` script or using the GUI interface program, audio can be speaker-separated and results displayed. The output includes the start and end times of each speaker and their identity information (registration is required first). Additionally, the article provides solutions for Chinese names in the Ubuntu system... (注:原文末尾“解决中文名”表述不完整,已保留原文未尽部分的省略格式,完整内容需参考原文后续章节)
Read MoreVoiceprint Recognition System Implemented Based on PyTorch
This project provides an implementation of voice recognition based on PaddlePaddle, mainly using the EcapaTDNN model, and integrates functions of speech recognition and voiceprint recognition. Below, I will summarize the project structure, functions, and how to use these functions. ## Project Structure ### Directory Structure ``` VoiceprintRecognition-PaddlePaddle/ ├── docs/ # Documentation │ └── README.md # Project description document ```
Read MoreVoiceprint Recognition System Based on PaddlePaddle
This project demonstrates how to use PaddlePaddle for speaker recognition (voiceprint recognition), covering the complete workflow from data preparation, model training to practical application. The project has a clear structure and detailed code comments, making it suitable for learning and reference. Below are supplementary explanations for some key points mentioned: ### 1. Environment Configuration Ensure you have installed the necessary dependency libraries. If using the TensorFlow or PyTorch version, please configure the environment according to the corresponding tutorials. ### 2. Data Preparation The `data`
Read MoreECAPa-TDNN Voiceprint Recognition Model Implemented with PyTorch
This project demonstrates how to implement speech recognition functionality using PaddlePaddle, specifically including voiceprint comparison and voiceprint registration. Below is a summary of the main content and some improvement suggestions: ### 1. Project Structure and Functions - **Voiceprint Comparison**: Compare the voice features of two audio files to determine if they are from the same person. - **Voiceprint Registration**: Store the voice data of new users in a database and generate corresponding user information. ### 2. Technology Stack - Use PaddlePaddle for model training and prediction.
Read MoreECAPa-TDNN Speaker Recognition Model Implemented Based on PaddlePaddle
This project is a voiceprint recognition system based on PaddlePaddle. It covers application scenarios from data preprocessing, model training to voiceprint recognition and comparison, and is suitable for practical applications such as voiceprint login. Here is a detailed analysis of the project: ### 1. Environment Preparation and Dependency Installation First, ensure that PaddlePaddle and other dependent libraries such as `numpy`, `matplotlib`, etc., have been installed. They can be installed using the following command: ```bash pip install paddlepaddle ```
Read MoreSpeech Recognition Model Based on PyTorch
This project demonstrates how to use the PaddlePaddle framework for voiceprint recognition, covering multiple steps from model training to application deployment. The following are some key points and improvement suggestions for this project: ### Summary of Key Points 1. **Data Preparation**: The `prepare_data.py` in the project is used to generate a dataset containing voiceprint features. 2. **Model Design**: ECAPA-TDNN was selected as the base model, and voiceprint recognition tasks were implemented through custom configurations. 3. **Training Process**: In the training...
Read MoreChinese Speaker Recognition Based on TensorFlow 2
This project well demonstrates how to use deep learning models for voiceprint recognition and voiceprint comparison. Below, I will optimize and improve the code and provide some suggestions to better implement these functions. ### 1. Project Structure First, ensure the project directory structure is clear and easy to understand, for example: ``` VoiceprintRecognition/ ├── data/ │ ├── train_data/ │ │ └── user_01.wav │ ├── test_ ``` (Note: The original input was cut off at "test_", so the translation includes the visible portion only.)
Read MoreChinese Voiceprint Recognition Based on Kersa
Thank you for providing the detailed explanation about voiceprint recognition and comparison. Below, I will provide you with a more detailed implementation step-by-step for the PaddlePaddle version, along with code examples. This project will include data preprocessing, model training, voiceprint comparison, and registration/recognition. ### 1. Environment Setup First, ensure that you have installed PaddlePaddle and other necessary libraries such as `numpy` and `sklearn`. You can install them using the following command: ```bash pip install p ```
Read MoreVoiceprint Recognition Based on PaddlePaddle
This project demonstrates how to implement a voiceprint recognition system based on speech recognition using PaddlePaddle. The entire project covers multiple aspects including model training, inference, and user interaction, making it a complete case study. The following are some supplementary explanations for the code and content you provided: ### 1. Environment Setup and Dependencies Ensure the necessary libraries are installed in your environment: ```bash pip install paddlepaddle numpy scipy sounddevice ``` For audio processing
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