基于子空间技术的人脸识别

G. P. Teja, S. Ravi
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引用次数: 34

摘要

近几十年来,人脸识别技术在图像分析和计算机视觉领域受到了广泛的关注,在各个领域都有广泛的应用。来自心理物理科学不同领域的科学家和来自计算机科学不同领域的科学家对它进行了研究。心理学家和神经科学家主要研究该主题的人类感知部分,而研究人脸机器识别的工程师则研究人脸识别的计算方面。人脸识别是人类一项重要的自然能力。然而,开发一种计算机算法来做同样的事情是计算机视觉中最困难的任务之一。过去几年的研究使类似的识别成为可能。各种人脸识别技术通过各种分类来表示,例如基于图像的人脸识别和基于视频的人脸识别,基于外观的人脸识别和基于模型的人脸识别,二维和三维人脸识别方法。本文回顾了目前不同的人脸识别技术。重点是子空间技术,研究图像预处理的使用,作为降低错误率的初步步骤。在子空间技术下实现了主成分分析、线性判别分析及其改进的人脸识别方法,在具有典型识别困难的标准图像测试集上计算错误接受率(FAR)和错误拒绝率(FRR)。通过应用一系列图像处理技术,证明了性能高度依赖于所使用的预处理步骤的类型,并且使用本文提出的方法可以降低特征脸和渔场方法的等错误率(EER)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face recognition using subspaces techniques
With many applications in various domains, Face Recognition technology has received a great deal of attention over the decades in the field of image analysis and computer vision. It has been studied by scientists from different areas of psychophysical sciences and those from different areas of computer science. Psychologists and neuro-scientists mainly deal with the human perception part of the topic where as engineers studying on machine recognition of human faces deal with the computational aspects of Face Recognition. Face Recognition is an important and natural human ability of a human being. However developing a computer algorithm to do the same thing is one of the toughest tasks in computer vision. Research over the past several years enables similar recognitions automatically. Various face recognition techniques are represented through various classifications such as, Image-based face recognition and Video-based recognition, Appearance-based and Model-based, 2D and 3D face recognition methods. This paper gives a review of different face recognition techniques available as of today. The focus is on subspace techniques, investigating the use of image pre-processing applied as a preliminary step in order to reduce error rates. The Principle Component Analysis, Linear Discriminant Analysis and their modified methods of face recognition are implemented under subspace techniques, computing False Acceptance Rates (FAR)and False Rejection Rates (FRR) on a standard test set of images that pose typical difficulties for recognition. By applying a range of image processing techniques it is demonstrated that the performance is highly dependent on the type of pre-processing steps used and that Equal Error Rates (EER) of the Eigenface and Fisherface methods can be reduced using the method proposed in this paper.
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