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Face Detection based Neural Networks using Robust Skin Color Segmentation

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This paper proposes a robust schema for face detection system via Gaussian mixture model to segment image based on skin color. After skin and non skin face candidates’ selection, features are extracted directly from discrete cosine transform (DCT) coefficients computed from these candidates. Moreover, the back-propagation neural networks are used to train and classify faces based on DCT feature coefficients in Cb and Cr color spaces. This schema utilizes the skin color information, which is the main feature of face detection. DCT feature values of faces, representing the data set of skin/non-skin face candidates obtained from Gaussian mixture model are fed into the back-propagation neural networks to classify whether the original image includes a face or not. Experimental results shows that the proposed schema is reliable for face detection, and pattern features are detected and classified accurately by the backpropagation neural networks. 
WP5: Detection, Extraction and Annotation of Knowledge. 
School of Informatics University of Bradford  Ying Weng 
2008-08-04 11:18  Request for more detail


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For educational purposes only - if public document. 
Copyright School of Informatics, University of Bradford. 
Published by IEEE Fifth International Multi-Conference on Systems, Signals and Devices (IEEE SSD'08), 20-23 July 2008, Amman-Jordan. 
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