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A Novel Optimal Gabor Algorithm for Face Classification

机译:一种新颖的脸部分类综合讲解算法

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Over the past decade, most of the research in the area of pattern classification has emphasized the use of Gabor filter (GF) banks for extracting features. Typically, the design and the choice of GF banks are done on experimentation basis. In this paper, an attempt is made on obtaining an optimized set of GFs for improving the performance of face classification. The bacteria foraging optimization (BFO) is utilized to get optimized parameters of GF. The proposed BFO-Gabor technique is utilized to derive the feature vectors from the face images based on Gabor energy. These feature vectors are then used by probabilistic reasoning model (PRM) to perform the classification task. The ORL and UMIST datasets are utilized to investigate the superiority of the proposed approach. In addition, the experimental results of the proposed approach and the classical methods are compared. It is observed that the proposed BFO-Gabor method is superior than the classical methods.
机译:在过去的十年中,模式分类领域的大部分研究都强调了使用Gabor滤波器(GF)银行来提取功能。 通常,设计和GF银行的选择在实验基础上进行。 在本文中,在获得优化的GFS上进行尝试以提高面部分类的性能。 细菌觅食优化(BFO)用于获得GF的优化参数。 所提出的BFO-Gabor技术用于基于Gabor能量从面部图像中获得特征向量。 然后由概率推理模型(PRM)使用这些特征向量来执行分类任务。 ORL和UMICT数据集用于调查所提出的方法的优越性。 此外,比较了所提出的方法和古典方法的实验结果。 观察到所提出的BFO-Gabor方法优于经典方法。

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