Dual Objective Feature Selection and Scaled Euclidean Classification for face recognition

Siddharth Srivatsa, Prajwal Shanthakumar, K. Manikantan, S. Ramachandran
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引用次数: 2

Abstract

The statistical description of the face varies drastically with changes in pose, illumination and expression. These variations make face recognition (FR) even more challenging. In this paper, two novel techniques are proposed, viz., Dual Objective Feature Selection to learn and select only discriminant features and Scaled Euclidean Classification to exploit within-class information for smarter matching. The 1-D discrete cosine transform (DCT) is used for efficient feature extraction. A complete FR system for enhanced recognition performance is presented. Experimental results on three benchmark face databases, namely, Color FERET, CMU PIE and ORL, illustrate the promising performance of the proposed techniques for face recognition.
面向人脸识别的双目标特征选择与尺度欧氏分类
面部的统计描述随着姿势、光照和表情的变化而急剧变化。这些变化使得人脸识别(FR)更具挑战性。本文提出了两种新技术:双目标特征选择(Dual Objective Feature Selection)和尺度欧几里德分类(scale Euclidean Classification),分别用于学习和选择判别特征和利用类内信息进行智能匹配。采用一维离散余弦变换(DCT)进行特征提取。提出了一种完整的增强识别性能的FR系统。在Color FERET、CMU PIE和ORL三个基准人脸数据库上的实验结果表明,所提出的人脸识别技术具有良好的性能。
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