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    3D Reconstruction of Face Using Front View and Side View Images

    , M.Sc. Thesis Sharif University of Technology Nowrozi, Danial (Author) ; Ramezanin, Rassul (Supervisor) ; Jamzad, Mansour (Co-Advisor)
    Abstract
    3D face modeling is currently a popular area in Computer Graphics and Computer Vision. Many techniques have been introduced for this purpose, such as using one or more cameras, 3D scanners, and many other systems of sophisticated hardware with related software. But the main goal is to find a good balance between visual reality and the cost of the system. In this thesis, reconstruction of a 3D human face from a pair of orthogonal views, front face and side face is studied. Unlike many other systems, facial feature points are obtained automatically from two photographs with the help of an Active shape model algorithm for the frontal face and an edge detection algorithm for side view of the... 

    Skin detection using contourlet-based texture analysis

    , Article 2009 4th International Conference on Digital Telecommunications, ICDT 2009, Colmar, 20 July 2009 through 25 July 2009 ; 2009 , Pages 59-64 ; 9780769536958 (ISBN) Fotouhi, M ; Rohban, M. H ; Kasaei, S ; IARIA ; Sharif University of Technology
    2009
    Abstract
    Detection of skin pixels in arbitrary images is addressed in this paper. We have combined texture and color information to segment skin regions. First, a pixel-based boosted skin detection method is used to locate skin pixels. To further improve the detect performance, skin region texture features are employed using the nonsubsampled contourlet coefficients. For the candidate skin pixels, the set of 8×8 patches around that pixel in all subimages are selected and the feature vector of each patch is extracted. Multilayer perceptron is then utilized to learn features and classify any given input sample. The proposed algorithm has achieved true positive rate of about 82.8% and false positive... 

    Skin segmentation based on cellular learning automata

    , Article 6th International Conference on Advances in Mobile Computing and Multimedia, MoMM2008, Linz, 24 November 2008 through 26 November 2008 ; November , 2008 , Pages 254-259 ; 9781605582696 (ISBN) Abin, Ahmad Ali ; Fotouhi, M ; Kasaei, S ; Sharif University of Technology
    2008
    Abstract
    In this paper, we propose a novel algorithm that combines color and texture information of skin with cellular learning automata to segment skin-like regions in color images. First, the presence of skin colors in an image is detected, using a committee structure, to make decision from several explicit boundary skin models. Detected skin-color regions are then fed to a color texture extractor that extracts the texture features of skin regions via their color statistical properties and maps them to a skin probability map. Cellular learning automatons use this map to make decision on skin-like regions. The proposed algorithm has demonstrated true positive rate of about 83.4% and false positive...