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Automated Detection of Human Emotion
Jennifer Lee Quarter 1
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Goal To be able to identify emotions using a low quality camera (webcam). Applications Human-Computer Interaction Alternate Reality Product Testing
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Past Research Very good results Two visual-based processes
About 80-90% accuracy Generally have access to high quality cameras Two visual-based processes Marker based Shadow based Anger Sadness Happiness Neutral 0.84 0.08 0.00 0.90 0.10 0.98 0.02 0.14 Analysis of Emotion Recognition using Facial Expressions, Speech and Multimodal Information (2004)
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Development Python (OpenGL, PIL) Read each image GUI Head Shift
Adjustments Analyze Tracking Image Lighting Adjustments Webcam Identify Markers Feature Isolation Produce Tracking Image
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Progress Python webcam integration Tracking Identification GUI
Basic marker identification Basic marker tracking Head movement compensation Detailed marker tracking Identification Basic Identification Learning GUI
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Current Progress Facial tilt and movement test image.
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Current Progress
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Problems Success rate lower than desired
Learning will improve this rate.
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