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Weighted sparse representation for human ear recognition based on local descriptor

机译:基于局部描述符的人耳识别加权稀疏表示

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A two-stage ear recognition framework is presented where two local descriptors and a sparse representation algorithm are combined. In a first stage, the algorithm proceeds by deducing a subset of the closest training neighbors to the test ear sample. The selection is based on the K-nearest neighbors classifier in the pattern of oriented edge magnitude feature space. In a second phase, the co-occurrence of adjacent local binary pattern features are extracted from the preselected subset and combined to form a dictionary. Afterward, sparse representation classifier is employed on the developed dictionary in order to infer the closest element to the test sample. Thus, by splitting up the ear image into a number of segments and applying the described recognition routine on each of them, the algorithm finalizes by attributing a final class label based on majority voting over the individual labels pointed out by each segment. Experimental results demonstrate the effectiveness as well as the robustness of the proposed scheme over leading state-of-the-art methods. Especially when the ear image is occluded, the proposed algorithm exhibits a great robustness and reaches the recognition performances outlined in the state of the art. (C) 2016 SPIE and IS&T
机译:提出了一个两阶段的耳朵识别框架,其中结合了两个局部描述符和一个稀疏表示算法。在第一阶段,算法通过推导最接近训练耳朵样本的子集来进行测试。该选择基于定向边缘幅度特征空间模式中的K近邻分类器。在第二阶段,从预选的子集中提取相邻局部二进制图案特征的共现,并组合以形成字典。然后,在已开发的字典上采用稀疏表示分类器,以推断最接近测试样本的元素。因此,通过将耳朵图像分成多个段并在每个段上应用所描述的识别例程,该算法通过基于对每个段所指出的各个标签的多数投票来归因于最终类别标签来最终确定。实验结果证明了该方案在领先的最新技术方法上的有效性和鲁棒性。特别是当遮挡耳朵图像时,所提出的算法表现出很高的鲁棒性,并且达到了现有技术中概述的识别性能。 (C)2016 SPIE和IS&T

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