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Face Recognition via Sparse Representation of SIFT Feature on Hexagonal-Sampling Image

机译:通过六角形 - 采样图像的SIFT特征稀疏表示的人脸识别

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This paper investigates a face recognition approach based on Scale Invariant Feature Transform (SIFT) feature and sparse representation. The approach takes advantage of SIFT which is local feature other than holistic feature in classical Sparse Representation based Classification (SRC) algorithm and possesses strong robustness to expression, pose and illumination variations. Since hexagonal image has more inherit merits than square image to make recognition process more efficient, we extract SIFT keypoint in hexagonal-sampling image. Instead of matching SIFT feature, firstly the sparse representation of each SIFT keypoint is given according the constructed dictionary; secondly these sparse vectors are quantized according dictionary; finally each face image is represented by a histogram and these so-called Bag-of-Words vectors are classified by SVM. Due to use of local feature, the proposed method achieves better result even when the number of training sample is small. In the experiments, the proposed method gave higher face recognition rather than other methods in ORL and Yale B face databases; also, the effectiveness of the hexagonal-sampling in the proposed method is verified.
机译:本文研究了基于规模不变特征变换(SIFT)特征和稀疏表示的面部识别方法。该方法利用了基于古典稀疏表示的分类(SRC)算法的整体特征的本地特征,具有强大的鲁棒性,对表达,姿势和照明变化具有强大的鲁棒性。由于六边形图像具有比方形图像更多的继承的优点,以便更有效地使识别过程更有效,因此我们提取六边形采样图像中的SIFT键盘。而不是匹配SIFT特征,首先根据构造的字典给出每个SIFT键盘的稀疏表示;其次,根据字典量化这些稀疏矢量;最后,每个面部图像由直方图表示,并且这些所谓的单词袋矢量被SVM分类。由于使用本地特征,即使训练样本的数量小,所提出的方法也能实现更好的结果。在实验中,所提出的方法具有更高的面部识别,而不是ORL和Yale B面部数据库中的其他方法;此外,验证了在所提出的方法中六边形抽样的有效性。

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