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Bidirectional two-dimensional algorithm based on Divisor method

机译:基于除法法的双向二维算法

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In recent years, the subspace learning methods based on the bidirectional two-dimensional are widely used in extracting features of face image. However, the existing bidirectional two-dimensional subspace learning methods always assume that the numbers of two mapping matrices' projection vectors are equal. Although this can simplify the computation, it will possibly cause the following two questions: (1) Get rid of information with classification properties; (2) Reserve information without classification properties. In order to solve the problem, this paper proposes a method called Divisor method and use it in bidirectional two-dimensional subspace learning method. This method calculates the percentage loss of mapping matrix in both row and column directions firstly, and then use the Divisor method to select the numbers of two mapping matrices' projection vectors, which base on the principle of minimum total percentage loss. The experimental results on ORL and YALE face database show that the proposed method yields greater recognition accuracy while reduces the overall computational complexity.
机译:近年来,基于双向二维的子空间学习方法广泛用于提取面部图像的特征。然而,现有的双向二维子空间学习方法总是假设两个映射矩阵投影矢量的数量是相等的。虽然这可以简化计算,但它可能导致以下两个问题:(1)摆脱具有分类属性的信息; (2)没有分类物业的储备信息。为了解决问题,本文提出了一种称为除数方法的方法,并在双向二维子空间学习方法中使用它。该方法首先计算两行和列方向上的映射矩阵的百分比损失,然后使用除法方法选择两个映射矩阵投影向量的数量,基于最小总百分比损耗的原理基础。 ORL和YOLE面部数据库的实验结果表明,该方法产生了更大的识别准确性,同时降低了整体计算复杂性。

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