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Face detection and posture recognition in a real time tracking system

机译:实时跟踪系统中的人脸检测和姿势识别

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The main purposes of this paper are to achieve human face detection and head posture recognition, as well as to track a dynamic image in real time via camera. First, skin-color region is detected. After morphological operations, unnecessary noise is removed, and the method of seed region growing is used to mark pixel blocks. Then the skin-color region is determined whether or not each block is a human face. If it is not human face, it is discarded. Otherwise, wavelet transform is used to decompose the face image. A low-frequency sub-band face image is captured by wavelet transform, and two-dimensional principle component analysis (2DPCA) is used to recognize head posture. Face color histograms are used to build face models, and faces are traced by the self-organizing hierarchical particle swarm optimizer with time-varying acceleration coefficients (HPSO-TVAC) algorithm. In order to solve the face masking problem, adaptive seeking windows are applied. When a human face is not detected, a large seeking window will be used, which will zoom in or out depending on the best global fitness.
机译:本文的主要目的是实现人脸检测和头部姿势识别,以及通过相机实时跟踪动态图像。首先,检测肤色区域。进行形态学运算后,去除了不必要的噪声,并且使用了种子区域生长方法来标记像素块。然后确定肤色区域是否每个块都是人脸。如果不是人脸,则将其丢弃。否则,使用小波变换分解人脸图像。通过小波变换捕获低频子带面部图像,并使用二维主成分分析(2DPCA)识别头部姿势。人脸颜色直方图用于构建人脸模型,并通过具有时变加速度系数(HPSO-TVAC)算法的自组织分层粒子群优化器对人脸进行跟踪。为了解决面部遮罩问题,应用了自适应搜索窗口。当未检测到人脸时,将使用较大的搜索窗口,该窗口将根据最佳的整体适应性进行放大或缩小。

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