中文引用格式: 赵淑欢. 基于深浅特征融合的人脸识别[J].电子技术应用,2020,46(2):28-31,35. 英文引用格式: Zhao Shuhuan. Fusion of deep and shallow features for face recognition[J]. Application of Electronic Technique,2020,46(2):28-31,35.
本文采用HOG作浅层特征,HOG(Histogram of Oriented Gradients)特征是图像的一种简单有效的局部特征描述符,首先,将图像划分成多个区域;然后,计算每个区域的梯度直方图,再将每个区域划分成几块,计算每块的梯度直方图并串联,构成该区域特征;将所有区域特征串联起来构成图像的HOG特征描述符。
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