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Music Classifier

Developed by gastonduault
Audio classification model based on Wav2Vec2 for music genre recognition
Downloads 478
Release Time : 11/17/2024

Model Overview

This model can accurately identify 10 different music genres through audio signal analysis, suitable for scenarios like music classification and recommendation systems.

Model Features

High-precision Classification
Achieves 75% accuracy on the validation set, effectively distinguishing between 10 different music genres
Based on Wav2Vec2
Utilizes Wav2Vec2's powerful audio feature extraction capabilities, eliminating the need for complex feature engineering
End-to-end Processing
Classifies directly from raw audio waveforms, simplifying the processing pipeline

Model Capabilities

Audio Classification
Music Genre Recognition
Audio Feature Extraction

Use Cases

Music Recommendation Systems
Automatic Music Classification
Automatically adds genre labels to songs in music libraries
Improves music classification efficiency and reduces manual labeling costs
Music Analysis
Music Style Trend Analysis
Analyzes genre distribution across large music collections
Helps understand music market trends
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