Wav2vec2 Large Emotion Detection German
A German speech emotion detection model based on wav2vec2, trained on the emo-DB dataset, capable of recognizing 7 different emotions.
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Release Time : 1/31/2023
Model Overview
This model is primarily used for emotion classification in German speech, capable of identifying 7 emotions: anger, boredom, disgust, fear, happiness, sadness, and neutrality.
Model Features
Multi-emotion Classification
Capable of recognizing 7 different emotional states, covering a wide range of emotional expressions.
Based on wav2vec2 Architecture
Utilizes the advanced wav2vec2 architecture for speech feature extraction and classification.
German-specific
A speech emotion recognition model specifically optimized for German.
Model Capabilities
Speech Emotion Recognition
Audio Classification
German Speech Processing
Use Cases
Human-Computer Interaction
Customer Service Emotion Analysis
Analyze emotional states in customer speech to help customer service systems respond more intelligently.
Improves customer satisfaction and service efficiency
Mental Health
Emotional State Monitoring
Monitor users' emotional changes through speech analysis.
Assists in mental health assessment
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