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Image Recognition Using Weighted Two-Dimensional Maximum Margin Criterion

机译:使用加权二维最大边距标准的图像识别

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In image recognition, feature extraction techniques are widely used to enhance discriminatory performance. In this paper, a new method for image feature extraction, called weighted two-dimensional maximum margin criterion (W2DMMC), is proposed. Different from conventional maximum margin criterion (MMC), W2DMMC is directly based on two-dimensional image matrix rather than one-dimensional vector. And W2DMMC has an additional weighted parameterâ that further broadens the margin. W2DMMC completely circumvents the small sample size problem and is computationally efficient. As a connection to 2DLDA, we show that 2DLDA can be recovered from W2DMMC when imposing some constraints. The better performance of W2DMMC in terms of both recognition accuracy and training time is demonstrated by experiments on real data set.
机译:在图像识别中,特征提取技术被广泛用于增强鉴别性能。在本文中,提出了一种用于图像特征提取的新方法,称为加权二维最大边距标准(W2DMC)。与传统的最大边距标准(MMC)不同,W2DMMC直接基于二维图像矩阵而不是一维矢量。并且W2DMMC具有额外的加权参数,进一步拓宽了边距。 W2DMMC完全避免小样本大小问题,并计算得高效。作为与2DLDA的连接,我们表明在施加一些限制时可以从W2DMMC恢复2DLDA。通过实际数据集的实验证明了在识别准确性和训练时间方面更好地表现了W2DMMC的性能。

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