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Generalized regression neural network trained preprocessing of frequency domain correlation filter for improved face recognition and its optical implementation

机译:广义回归神经网络训练的频域相关滤波器预处理,用于改进人脸识别及其光学实现

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摘要

The paper proposes an improved strategy for face recognition using correlation filter under varying lighting conditions and occlusion where spatial domain preprocessing is carried out by two convolution kernels. The first convolution kernel is a contour kernel for emphasizing high frequency components of face image and the other kernel is a smoothing kernel used for minimization of noise those may arise due to preprocessing. The convolution kernels are obtained by training a generalized regression neural network using enhanced face features. Face features are enhanced by conventional principal component analysis. The proposed method reduces the false acceptance rate and false rejection rate in comparison to other standard correlation filtering techniques. Moreover, the processing is fast when compared to the existing illumination normalization techniques. A scheme of hardware implementation of all optical correlation technique is also suggested based on single spatial light modulator in a beam folding architecture. Two benchmark databases YaleB and PIE are used for performance verification of the proposed scheme and the improved results are obtained for both illumination variations and occlusions in test face images.
机译:本文提出了一种在不同光照条件和遮挡条件下使用相关滤波器进行人脸识别的改进策略,其中通过两个卷积核对空间域进行预处理。第一个卷积核是用于强调人脸图像的高频分量的轮廓核,而另一个核是用于最小化由于预处理而可能产生的噪声的平滑核。通过使用增强的面部特征训练广义回归神经网络来获得卷积核。脸部特征通过常规主成分分析得到增强。与其他标准相关滤波技术相比,该方法降低了错误接受率和错误拒绝率。而且,与现有的照度归一化技术相比,处理速度很快。还提出了一种基于光束折叠架构中的单个空间光调制器的全光相关技术的硬件实现方案。使用两个基准数据库YaleB和PIE对所提出的方案进行性能验证,并针对测试面部图像中的照明变化和遮挡获得了改进的结果。

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