一种鲁棒光照强度不变人脸识别系统

M. Meena, Shreya Pare, Priti Singh, A. Rana, M. Prasad
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引用次数: 0

摘要

人脸识别在计算机视觉领域受到越来越多的关注,其重点是对人的表情变化进行建模。然而,在计算机视觉系统中,由于表情、姿势和光照条件的变化,人脸识别是一项具有挑战性的任务。提出了一种基于二维混合马尔可夫模型(2D HMM)、猫游优化(CSO)、局部方向模式(LDP)和Tetrolet变换的人脸识别技术。采用皮肤分割法进行预处理,然后进行滤波提取感兴趣的区域。将生成的图像馈送到由Tetrolet变换和LDP组成的特征提取方法中。提取的特征使用提出的分类器“CSO训练2D-HMM分类方法”进行分类。为了证明该方法的优越性,使用了4个人脸数据集,并给出了对比结果。通过错误接受率(FAR)、错误拒绝率(FRR)和准确性(Accuracy)对结果进行定量测量,其值分别为0.0025、0.0035和99.65%
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A Robust Illumination and Intensity invariant Face Recognition System
Face recognition has achieved more attention in computer vision with the focus on modelling the expression variations of human. However, in computer vision system, face recognition is a challenging task, due to variation in expressions, poses, and lighting conditions. This paper proposes a facial recognition technique based on 2D Hybrid Markov Model (2D HMM), Cat Swam Optimization (CSO), Local Directional Pattern (LDP), and Tetrolet Transform. Skin segmentation method is used for pre-processing followed by filtering to extract the region of interest. Resultant image is fed to proposed feature extraction method comprising of Tetrolet Transform and LDP. Extracted features are classified using proposed classifier “CSO trained 2D-HMM classification method”. To prove the superiority of method, four face datasets are used, and comparative results are presented. Quantitively results are measured by False Acceptance Rate (FAR), False Rejection Rate (FRR) and Accuracy and the values are 0.0025, 0.0035 and 99.65% respectively
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来源期刊
International Journal of Circuits, Systems and Signal Processing
International Journal of Circuits, Systems and Signal Processing Engineering-Electrical and Electronic Engineering
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