Performance Evaluation of Block-Sized Algorithms for Majority Vote in Facial Recognition

Andrea Ruiz-Hernandez, Jennifer Lee, Nawal Rehman, Jayanthi Raghavan, Majid Ahmadi
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Abstract

Facial recognition (FR) is a pattern recognition problem, in which images can be considered as a matrix of pixels.There are manychallenges that affect the performance of face recognitionincluding illumination variation, occlusion, and blurring. In this paper,a few preprocessing techniques are suggested to handle the illumination variationsproblem. Also, other phases of face recognition problems like feature extraction and classification are discussed. Preprocessing techniques like Histogram Equalization (HE), Gamma Intensity Correction (GIC), and Regional Histogram Equalization (RHE) are tested inthe AT&T database. For feature extraction, methods such as Principal Component Analysis (PCA), Linear Discriminant Analysis (LDA), Independent Component Analysis (ICA), and Local Binary Pattern (LBP) are applied. Support Vector Machine (SVM) is used as the classifier. Both holistic and block-based methods are tested using the AT&T database. For twelve different combinations of preprocessing, feature extraction, and classification methods, experiments involving various block sizes are conducted to assess the computation performance and recognition accuracy for the AT&T dataset.Using the block-based method, 100% accuracy is achieved with the combination of GIC preprocessing, LDA feature extraction,and SVM classification using 2x2 block-sizingwhile the holistic method yields the maximum accuracy of 93.5%. The block-sized algorithm performs better than the holistic approach under poor lighting conditions.SVM Radial Basis Function performs extremely well on theAT&Tdataset for both holistic and block-based approaches.
人脸识别中多数投票的块大小算法性能评价
人脸识别(FR)是一个模式识别问题,其中图像可以被认为是一个像素矩阵。影响人脸识别性能的挑战有很多,包括光照变化、遮挡和模糊。本文提出了几种处理光照变化问题的预处理技术。此外,还讨论了人脸识别的其他阶段问题,如特征提取和分类。预处理技术,如直方图均衡化(HE),伽马强度校正(GIC)和区域直方图均衡化(RHE)在AT&T数据库中进行了测试。在特征提取方面,采用了主成分分析(PCA)、线性判别分析(LDA)、独立成分分析(ICA)和局部二值模式(LBP)等方法。使用支持向量机(SVM)作为分类器。使用AT&T数据库对整体方法和基于块的方法进行了测试。针对预处理、特征提取和分类方法的12种不同组合,进行了涉及不同块大小的实验,以评估AT&T数据集的计算性能和识别精度。采用基于块的方法,采用GIC预处理、LDA特征提取和2x2块大小的SVM分类相结合的方法,准确率达到100%,而整体方法的准确率最高为93.5%。在较差的光照条件下,块大小的算法比整体方法性能更好。支持向量机径向基函数在整体和基于块的方法上都表现得非常好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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