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Recognizing faces with normalized local Gabor features and Spiking Neuron Patterns

机译:识别具有标准化局部Gabor特征和尖峰神经元模式的人脸

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Gabor Wavelets (GW) have been extensively used for facial feature representation due to its inherent multi-resolution and multi-orientation characteristics. In this work we extend the work on Local Gabor Feature Vector (LGFV) and propose a new face recognition method called LGFV//LN//SNP, which employs local normalization filter in pre-processing stage. We propose a novel Spiking Neuron Patterns (SNP) as a dimensionality reduction method to reduce the dimensions of local Gabor features. SNP is acquired from projection of LGFV//LN features using Spike Response Model (SRM), a neuron model describing the spike behavior of a biological neuron. Results on AR, FERET, Yale B and FRGC 2:0 face datasets showed that SNP implementation delivered significant improvement in accuracy. Comparisons with several previously published results also suggested that LGFV//LN//SNP achieved better results in some tests. Additionally, LGFV//LN//SNP requires relatively smaller number of GW than LGFV//LN to produce optimal results. (C) 2015 Elsevier Ltd. All rights reserved.
机译:Gabor小波(GW)由于其固有的多分辨率和多方位特性而被广泛用于面部特征表示。在这项工作中,我们扩展了关于局部Gabor特征向量(LGFV)的工作,并提出了一种称为LGFV // LN // SNP的新人脸识别方法,该方法在预处理阶段采用了局部归一化滤波器。我们提出了一种新颖的尖峰神经元模式(SNP)作为降维方法,以减少局部Gabor特征的维数。使用尖峰响应模型(SRM)从LGFV // LN特征的投影中获取SNP,这是描述生物神经元的尖峰行为的神经元模型。在AR,FERET,Yale B和FRGC 2:0人脸数据集上的结果表明,SNP的实现大大提高了准确性。与先前发布的一些结果进行比较还表明,在某些测试中,LGFV // LN // SNP获得了更好的结果。此外,与LGFV // LN相比,LGFV // LN // SNP需要相对较少的GW数量即可产生最佳结果。 (C)2015 Elsevier Ltd.保留所有权利。

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