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Design and Analysis of A New Illumination Invariant Human Face Recognition System

机译:一种新型照明不变人脸识别系统的设计与分析

摘要

In this dissertation we propose the design and analysis of a new illumination invariant face recognition system. We show that the multiscale analysis of facial structure and features of face images leads to superior recognition rates for images under varying illumination. We assume that an image I ( x,y ) is a black box consisting of a combination of illumination and reflectance. A new approximation is proposed to enhance the illumination removal phase. As illumination resides in the low-frequency part of images, a high-performance multiresolution transformation is employed to accurately separate the frequency contents of input images. The procedure is followed by a fine-tuning process. After extracting a mask, feature vector is formed and the principal component analysis (PCA) is used for dimensionality reduction which is then proceeded by the extreme learning machine (ELM) as a classifier. We then analyze the effect of the frequency selectivity of subbands of the transformation on the performance of the proposed face recognition system. In fact, we first propose a method to tune the characteristics of a multiresolution transformation, and then analyze how these specifications may affect the recognition rate. In addition, we show that the proposed face recognition system can be further improved in terms of the computational time and accuracy. The motivation for this progress is related to the fact that although illumination mostly lies in the low-frequency part of images, these low-frequency components may have low- or high-resonance nature. Therefore, for the first time, we introduce the resonance based analysis of face images rather than the traditional frequency domain approaches. We found that energy selectivity of the subbands of the resonance based decomposition can lead to superior results with less computational complexity. The method is free of any prior information about the face shape. It is systematic and can be applied separately on each image. Several experiments are performed employing the well known databases such as the Yale B, Extended-Yale B, CMU-PIE, FERET, ATu26T, and LFW. Illustrative examples are given and the results confirm the effectiveness of the method compared to the current results in the literature.
机译:本文提出了一种新的光照不变人脸识别系统的设计与分析。我们表明,对面部图像的面部结构和特征进行多尺度分析,可以在变化的照明条件下为图像提供卓越的识别率。我们假设图像I(x,y)是一个由照明和反射率组合而成的黑匣子。提出了一种新的近似值以增强照明去除阶段。由于照明位于图像的低频部分,因此采用了高性能的多分辨率变换来准确分离输入图像的频率内容。该过程之后是一个微调过程。提取遮罩后,形成特征向量并将主成分分析(PCA)用于降维,然后由极限学习机(ELM)作为分类器进行处理。然后,我们分析了变换子带的频率选择性对所提出的人脸识别系统的性能的影响。实际上,我们首先提出了一种调整多分辨率转换特征的方法,然后分析这些规范如何影响识别率。此外,我们表明,提出的人脸识别系统可以在计算时间和准确性方面得到进一步改进。取得这一进展的动机与以下事实有关:尽管照明主要位于图像的低频部分,但是这些低频分量可能具有低共振或高共振的性质。因此,我们第一次引入了基于共振的人脸图像分析,而不是传统的频域方法。我们发现,基于共振的分解的子带的能量选择性可以以较少的计算复杂度获得更好的结果。该方法没有关于面部形状的任何先前信息。它是系统性的,可以分别应用于每个图像。使用众所周知的数据库,例如Yale B,Extended-Yale B,CMU-PIE,FERET,AT u26T和LFW,进行了一些实验。给出了说明性的例子,并且与文献中的当前结果相比,结果证实了该方法的有效性。

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  • 作者

    Baradarani Aryaz;

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  • 年度 2012
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