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Optimal Gabor Kernel's Scale and orientation selection for face classification

机译:用于面部分类的最佳Gabor核比例和方向选择

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2D Gabor-based face representation has attracted much attention. However, owing to the fact that Gabor features are redundant and too high-dimensional, appropriate feature dimension reduction appears to be much more paramount. Allowing for each individual Gabor feature constructed by a combination of scale and orientation pair, we equate feature dimension reduction problem to optimal Gabor kernels' scales and orientation selection problem. Genetic algorithms (GAs) have represented a useful tool for optimal subset selection. However, population premature and optimization stagnancy problems exist in traditional GAs. Here we present an improved algorithm: Hybrid Genetic algorithms-based (HGAsb), which introduces the concept of the simulated annealing into traditional GAs to effectively solve the problems mentioned above and to improve optimization efficiency. Experimental results on IMM face database demonstrate that in contrast to GAs, our proposed algorithm can provide 4.25 improvements. The distributions of orientations and scales of the selected features by HGAsb are also analyzed. Results indicate that the features in the larger scales have equal importance as those in the smaller scales in discriminating nuance of faces. The features in horizontal, vertical and 225 degrees orientations have more discriminative power. (c) 2006 Elsevier Ltd. All rights reserved.
机译:基于2D Gabor的人脸表示已经引起了很多关注。但是,由于Gabor要素多余且尺寸过大,因此适当减小特征尺寸似乎更为重要。考虑到由比例和方向对组合构成的每个单独的Gabor特征,我们将特征维数减少问题等同于最佳Gabor核的比例和方向选择问题。遗传算法(GA)代表了用于最佳子集选择的有用工具。但是,传统GA中存在人口过早和优化停滞的问题。在这里,我们提出一种改进的算法:基于混合遗传算法(HGAsb),它将模拟退火的概念引入传统GA中,以有效解决上述问题并提高优化效率。在IMM人脸数据库上的实验结果表明,与遗传算法相比,我们提出的算法可以提供4.25的改进。还分析了通过HGAsb选择的特征的方向和比例的分布。结果表明,在区分面部细微差别方面,较大尺度的特征与较小尺度的特征具有同等重要性。水平,垂直和225度方向的特征具有更大的判别力。 (c)2006 Elsevier Ltd.保留所有权利。

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