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Development of face recognition system based on PCA and LBP for intelligent anti-theft doors

机译:基于PCA和LBP的人脸识别系统的开发智能防盗门

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The face recognition system of intelligent anti-theft door by the embedded processor S3C6410 platform drive USB camera to capture the face data, it uses AdaBoost algorithm for detecting and classifying face region gradually in Opencv face database. And then, it uses Local Binary Pattern (LBP) operator with LBP image coding to describe the texture feature of local area which can extract facial feature rapidly. In the end, Principal Component Analysis (PCA) method is used for reducing facial feature matrix dimensionality, which reduces the amount of calculation and data quantity and improves the recognition speed greatly at the same time. The unlock part of the Anti-theft door reads data to unlock or alarm. After MATLAB simulation, the system is transplanted to the embedded device, and the results show that the system is stable, fast and efficient, and has a good commercial value.
机译:嵌入式处理器S3C6410平台的智能防盗门的面部识别系统驱动USB相机捕获面部数据,它使用ADABOOST算法在OpenCV面部数据库中逐渐检测和分类面部区域。然后,它使用具有LBP图像编码的本地二进制模式(LBP)操作员来描述局域的纹理特征,其可以快速提取面部特征。最后,主要成分分析(PCA)方法用于减少面部特征矩阵维度,这减少了计算和数据量的量,同时大大提高了识别速度。解锁部分防盗门读取数据以解锁或警报。在Matlab仿真之后,系统被移植到嵌入式设备,结果表明系统稳定,快速高效,具有良好的商业价值。

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