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首页> 外文期刊>British Journal of Applied Science and Technology >Normalized Independent Component Analysis forFace Recognition
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Normalized Independent Component Analysis forFace Recognition

机译:标准化的独立成分分析用于人脸识别

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Aims: To design a Face Recognition System (FRS) using combination Independent Component Analysis (ICA) and Artificial Neural Network - Normalized ICA. In order to improve the performance of a conventional ICA which suffers the drawback of ranking the energies of the generated features.Study Design: The FRS was simulated using Matlab 2011 version. An algorithm was developed which combines the ability of the conventional ICA with ANN to generate final predictions. The ANN serves as a region finder and generated likely predictions associated with face image classes. Hence, reduced search space during testing.Place and Duration of Study: Department of Computer Science and Engineering, Ladoke Akintola University of Technology, Ogbomoso, Nigeria, between June 2014 and July 2015.Methodology: 40 individuals face images were captured in an uncontrolled environment. The face database comprises of 10 images for each subject taken at different times. The images were pre processed by cropping to different sizes (92*92; 92*100; 92*112 pixels respectively) and removing unwanted background. During testing Euclidean distance was used as similarity measure and faces were classified as “known” if less or equal to the threshold value set else “unknown”.Results: The recognition accuracies at dimension 92*92 are 86.00% and 95.00% for ICA and NICA-based system using 30 principal components, 86.50% and 96.00% using 60 principal components at the same dimension respectively. At dimension 92*112 a recognition accuracy of 90.00% and 98.00% was obtain for ICA and NICA-based system, 91.00% and 98.00% using 60 principal components at the same dimension respectively. At cropped dimension 92*92 it took an average of 0.0096s and 0.0095s using 30 principal components to recognize a test image in ICA-and NICA-based, 0.0086s and 0.0085s using 60 principal components at the same dimension respectively and at cropped dimension of 92*112 it took an average of 0.0102s and 0.0098s using 30 principal components, 0.0106s and 0.0099s using 60 principal components at the same dimension respectivelyConclusion: The developed NICA-based system has better recognition accuracy than a conventional ICA-based system and also recognizes face images faster.
机译:目的:设计使用独立成分分析(ICA)和人工神经网络-归一化ICA相结合的人脸识别系统(FRS)。为了提高传统ICA的性能,传统ICA的缺点是无法对生成特征的能量进行排名。研究设计:FRS使用Matlab 2011版本进行了仿真。开发了一种算法,该算法结合了传统ICA和ANN的能力来生成最终预测。 ANN用作区域查找器,并生成与面部图像类别相关的可能预测。因此,减少了测试过程中的搜索空间。研究地点和持续时间:2014年6月至2015年7月,尼日利亚拉格克·阿金托拉技术大学计算机科学与工程系,方法:在不受控制的环境中捕获了40个人的面部图像。脸部数据库包含每个对象在不同时间拍摄的10张图像。通过裁剪为不同大小(分别为92 * 92; 92 * 100; 92 * 112像素)并去除不需要的背景来对图像进行预处理。在测试期间,欧几里德距离用作相似性度量,并且如果小于或等于阈值集,则将面部分类为“已知”,否则将其分类为“未知”。结果:92 * 92维度的识别准确度分别为ICA和86.00%和95.00%基于NICA的系统使用30个主要成分,分别使用相同尺寸的60个主要成分的86.50%和96.00%。在尺寸为92 * 112的情况下,基于ICA和NICA的系统的识别精度分别为90.00%和98.00%,使用相同尺寸的60个主要组件分别达到91.00%和98.00%。在裁切尺寸为92 * 92的情况下,使用30个主要成分平均花费0.0096s和0.0095s来识别基于ICA和NICA的测试图像,分别使用相同尺寸和裁切的60个主要成分来识别0.0086s和0.0085s。尺寸为92 * 112时,使用30个主要成分的平均时间分别为0.0102s和0.0098s,使用相同尺寸的60个主要成分的时间分别为0.0106s和0.0099s。结论:基于NICA的系统比传统的ICA-基于系统,还可以更快地识别人脸图像。

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