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Feature Selection for HOG Descriptor Based on Greedy Algorithm

机译:基于贪婪算法的HOG描述符的功能选择

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In order to make an efficient face recognition algorithm with real time processing, we should design good feature extraction and classification methods by considering both low computational costs and high classification performance. Among various feature extraction methods, the histogram of oriented gradient (HOG) feature shows good classification performance to classify human faces. However, high-dimensional features such as HOG feature waste lot of memory and computational time, some parts of HOG features for occluded face regions have negative effects in classifying face images, especially occluded face images. Therefore, we should select variable HOG features not only to reduce the computational costs but also to enhance classification performance. In this paper, we applied the greedy algorithm to effectively select the good features within traditional HOG feature. In order to compare the proposed feature extraction with the conventional HOG feature, we fixed classification method such as compressive sensing technique for selected features. Experimental results show that the proposed feature extraction has better classification performance than the traditional HOG features for face datasets with partial occlusion and/or various illumination conditions.
机译:为了通过实时处理进行高效的人脸识别算法,我们应该通过考虑低计算成本和高分类性能来设计良好的特征提取和分类方法。在各种特征提取方法中,取向梯度(HOG)特征的直方图显示出良好的分类性能以分类人面。然而,诸如Hog特征的高维特征是浪费很多内存和计算时间,用于遮挡面部区域的一些部分的猪特征在分类面部图像中具有负效应,尤其是遮挡的面部图像。因此,我们应该选择变量猪功能,不仅可以降低计算成本,而且还要提高分类性能。在本文中,我们应用了贪婪算法,以有效地选择传统的猪群中的良好功能。为了将所提出的特征提取与传统的HOG特征进行比较,我们修复了用于所选特征的压缩传感技术等分类方法。实验结果表明,该特征提取具有比具有部分闭塞和/或各种照明条件的面部数据集的传统猪特征具有更好的分类性能。

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