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Face Detection In Color Images Wenmiao Lu Shaohua Sun Group 3 EE368 Project.

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Presentation on theme: "Face Detection In Color Images Wenmiao Lu Shaohua Sun Group 3 EE368 Project."— Presentation transcript:

1 Face Detection In Color Images Wenmiao Lu Shaohua Sun Group 3 EE368 Project

2 Overview Human Skin Segmentation Adaptive Shape Analysis View-based Face Detection Results EE368 Project Skin Segmentation Shape Analysis Face Detection

3 Human Skin Segmentation EE368 Project Use YCbCr color space for good cluster separation Model the skin and background color distributions with GMM Segmentation by maximum likelihood classification

4 An Example for Initial Skin Segmentation EE368 Project Fairly complete skin segmentation with some noise

5 Adaptive Shape Analysis EE368 Project Refine the binary map Open to get smaller regions Initial Face Identification Erosion & Dilation Different Structuring Elements Prior Information

6 An Example for Adaptive Shape Analysis EE368 Project Medium size: faces Small, big or odd shaped regions: passed to next stage

7 View-Based Face Detection EE368 Project Project to Low-dimensional Feature Space Spanned by Largest Eigenvectors Face/Non-Face Decision Test Pattern

8 Distances to Face Model EE368 Project Test pattern is measured against the Face Model, which consists of i) 6 Face Clusters and ii) 6 Non-face Clusters *Figure is obtain from Sung, Kah Kay (1996) Learning and Example Selection for Object and Pattern Detection. Ph.D. Thesis, Massachusetts Institute of Technology, 1995.

9 Distances between Test Pattern and One Cluster EE368 Project *Figure is obtain from Sung, Kah Kay (1996) Learning and Example Selection for Object and Pattern Detection. Ph.D. Thesis, Massachusetts Institute of Technology, 1995.

10 Neural Network Classification EE368 Project 2-distance metric is discriminative for face and non-face patterns. 2 distances have different magnitude; neural network performs the final classification. *Figure is obtain from Sung, Kah Kay (1996) Learning and Example Selection for Object and Pattern Detection. Ph.D. Thesis, Massachusetts Institute of Technology, 1995.

11 Experimental Results Detection Rate: 95.6% False Positive: 0.6% EE368 Project

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