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Robust 3D Head Pose Classification using Wavelets by Mukesh C. Motwani Dr. Frederick C. Harris, Jr., Thesis Advisor December 5 th, 2002 A thesis submitted in partial fulfillment of the requirements for the degree of Master of Science in Computer Engineering University of Nevada, Reno
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Overview Problem Description Problem Description Proposed Solution Proposed Solution Wavelets and PCA Wavelets and PCA Future Work Future Work Questions and Answers Questions and Answers Demo Demo
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What is Pose Classification ?
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Potential Applications Face Recognition Face Recognition
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Potential Applications Virtual Reality Virtual Reality
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Potential Applications Video Conferencing Video Conferencing
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Potential Applications Robotics Robotics
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Potential Applications Driver Vigilance Driver Vigilance
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What makes Pose Detection so difficult? Identity Identity
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What makes Pose Detection so difficult? Face Detection Face Detection
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What makes Pose Detection so difficult? Facial Expression Facial Expression
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What makes Pose Detection so difficult? Changes in distance from Camera Changes in distance from Camera
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What makes Pose Detection so difficult? Occlusion Occlusion
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What makes Pose Detection so difficult? Changes in Illumination Changes in Illumination
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Previous Work Feature Based Feature Based Appearance Based Appearance Based Model Based Model Based Other Combined Approaches Other Combined Approaches
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Feature Based Pose Detection Kalman Filter Kalman Filter Gabor Jets Gabor Jets Elastic Graph Bunching Elastic Graph Bunching
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Appearance Based Pose Detection Template Matching Template Matching Neural Networks / Wavelet Neural Networks Neural Networks / Wavelet Neural Networks SVM SVM PCA PCA
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Model Based Pose Detection Skin Color Skin Color Anthropometry Anthropometry
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Other Combined Approaches Volumetric Frequency Representation Volumetric Frequency Representation Hairline contour Hairline contour Optical Flow Optical Flow
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PCA Based Approach “View Based” “View Based” “Parametric” “Parametric” 1. Motivation for choosing PCA 2. Sub categories in PCA based approach
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Block Diagram Training Stage Training Stage Training Images Detection Stage Detection Stage Detected Pose Detected PoseQueryImage Discrete Wavelet Transform Principal Component Analysis Manifold Plot Discrete Wavelet Transform Principal Component Analysis Eigen Space Projection
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Wavelet Transform Filter Banks Filter Banks
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Wavelet Transform Subband Decomposition Subband Decomposition Low Pass Output High Pass Output LLHL LHHH
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DWT of Lena Image
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Selection of Resolution Level Distribution of energy in LL subband at different levels of discrete wavelet transform
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Selection of Resolution Level
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Principal component analysis (PCA) 1.Mean Image (Enlarged) 2. Compute covariance matrix 3. Compute eigen-vectors and eigen-coefficients
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Manifold Plot
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Experimentation Facial Expression Facial Expression
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Experimentation Changes in distance from camera Changes in distance from camera
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Experimentation Changes in Illumination Changes in Illumination
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Experimentation Identity change Identity change
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Performance Classification accuracy of 84% Classification accuracy of 84% Real time capability 12-15 fps Real time capability 12-15 fps
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Conclusion Faster Faster More Robust More Robust Cheaper Cheaper
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Future Work Face Detection Face Detection Identity Independent Identity Independent Undecimated Wavelet Transform Undecimated Wavelet Transform
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Questions ? / Answers Questions ? / Answers Real-time Demo Real-time Demo
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