Portfolio Details

Wav2Vec Model Architecture
Training Process
Accuracy Metrics

Project Information

  • Category: AI/ML Model
  • Purpose: FYP
  • Project Year: 2025
  • Accuracy: 99%
  • Technology: Wav2Vec 2.0

Fake Voice Detection with Wav2Vec 2

This project implements a state-of-the-art deep learning model to detect synthetic or manipulated voice recordings with 99% accuracy. Using Facebook's Wav2Vec 2.0 architecture, the system analyzes audio characteristics to distinguish between genuine and fake speech.

Key Features:

  • High Accuracy: Achieves 99% detection rate on test datasets
  • Advanced Model: Based on Wav2Vec 2.0 transformer architecture
  • Robust Detection: Identifies various types of audio deepfakes
  • Efficient Processing: Optimized for performance with minimal latency

Potential applications include security systems, content verification, and fraud prevention in voice authentication scenarios.