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Wav2vec2 Base 100k Eating Sound Collection

Developed by m3hrdadfi
A Wav2Vec 2.0-based eating sound classification model capable of recognizing 20 different types of food eating sounds
Downloads 26
Release Time : 3/2/2022

Model Overview

This model is trained using the Wav2Vec 2.0 architecture, specifically designed for classifying different types of food eating sounds. It can recognize chewing sounds from various foods, ranging from potato chips to gummy candies.

Model Features

High-precision Classification
Accurately recognizes eating sounds from 20 different types of food with an average accuracy of 89%
Based on Wav2Vec 2.0 Architecture
Utilizes Wav2Vec 2.0's powerful audio feature extraction capabilities for sound classification
Ready-to-use Model
Provides a pre-trained model that can be directly used for prediction without additional training

Model Capabilities

Audio Classification
Eating Sound Recognition
Multi-category Classification

Use Cases

Health & Nutrition
Diet Monitoring
Automatically records dietary content by analyzing eating sounds
Can recognize eating behaviors of 20 different types of food
Smart Home
Smart Kitchen Applications
Identifies family members' eating habits
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