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Face recognition by subspace analysis of 2D Log-Gabor wavelets features

机译:通过2D Log-Gabor小波特征子空间分析进行人脸识别

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In this paper, we discuss a face recognition scheme by subspace analysis of 2D Log-Gabor wavelets features. In which, an input face image is firstly decomposed with a set of two dimensional Log-Gabor wavelets (2D-LGWs) localized with respect to spatial location, orientation and frequency. Based on complex responses of filters, local energy model (LEM) is used to represent Log-Gabor features (LGFs) which are substantially effective for the task of recognition. Then, subspace modeling is performed to transform the high dimensional LGFs into more compact one to simplify the task of classification. Common nearest-neighbor (NN) based matching algorithm is adopted to classify a probe to one of classes. The superiority of the proposed scheme for face recognition is comparatively demonstrated with the traditional appearance-based methods. Moreover, performances of several leading subspace techniques, PCA, ICA and LDA, are comparatively evaluated based on LGFs representation.
机译:在本文中,我们通过对2D Log-Gabor小波特征进行子空间分析来讨论人脸识别方案。其中,首先使用在空间位置,方向和频率方面定位的二维Log-Gabor小波(2D-LGW)集合分解输入的人脸图像。基于过滤器的复杂响应,局部能量模型(LEM)用于表示对识别任务基本有效的Log-Gabor特征(LGF)。然后,进行子空间建模以将高维LGF转换为更紧凑的LGF,以简化分类任务。采用基于公共最近邻(NN)的匹配算法将探针分类为一个类别。与传统的基于外观的方法比较地证明了所提出的面部识别方案的优越性。此外,基于LGF的表示,比较评估了几种领先的子空间技术PCA,ICA和LDA的性能。

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