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Dimensionality reduced local directional pattern (DR-LDP) for face recognition

机译:降维的局部方向图(DR-LDP)用于人脸识别

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摘要

Local Directional Pattern (LDP) is a descriptor used for face recognition. It assigns a code for each pixel in the image, and the resultant LDP-encoded image is divided into regions for which each a histogram is generated. The histogram bins of all the regions are concatenated to form the final descriptor. In contrast to LDP, a dimensionality reduced local directional pattern (DR-LDP) is proposed in this paper. The proposed descriptor computes single code for each block by X-ORing the LDP codes obtained in a single block. During the process, restructuring of the patterns is done by slightly modifying the LDP coding pattern constraints. The significance of DR-LDP is the compact code generation for efficient face recognition. The experiments were carried out on standard databases like FERET, extended YALE-B database and ORL. The resultant DR-LDP descriptor provided better recognition rates, outperforming the existing local descriptor-based methods and proving its efficacy. The compact code can be further extended to provide biometric security. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本地方向模式(LDP)是用于面部识别的描述符。它为图像中的每个像素分配一个代码,然后将所得的LDP编码图像划分为每个生成直方图的区域。将所有区域的直方图块连接起来以形成最终描述符。与LDP相比,本文提出了一种降维局部方向图(DR-LDP)。提出的描述符通过对单个块中获得的LDP码进行X或运算,为每个块计算单个码。在此过程中,通过略微修改LDP编码模式约束来完成模式重构。 DR-LDP的意义在于紧凑的代码生成,可实现有效的面部识别。实验在标准数据库如FERET,扩展的YALE-B数据库和ORL上进行。最终的DR-LDP描述符提供了更好的识别率,优于现有的基于本地描述符的方法并证明了其有效性。紧凑的代码可以进一步扩展以提供生物识别安全性。 (C)2016 Elsevier Ltd.保留所有权利。

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