Applying Artificial Neural Networks for Face Recognition

T. Le
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引用次数: 76

Abstract

This paper introduces some novel models for all steps of a face recognition system. In the step of face detection, we propose a hybrid model combining AdaBoost and Artificial Neural Network (ABANN) to solve the process efficiently. In the next step, labeled faces detected by ABANN will be aligned by Active Shape Model and Multi Layer Perceptron. In this alignment step, we propose a new 2D local texture model based on Multi Layer Perceptron. The classifier of the model significantly improves the accuracy and the robustness of local searching on faces with expression variation and ambiguous contours. In the feature extraction step, we describe a methodology for improving the efficiency by the association of two methods: geometric feature based method and Independent Component Analysis method. In the face matching step, we apply a model combining many Neural Networks for matching geometric features of human face. The model links many Neural Networks together, so we call it Multi Artificial Neural Network. MIT + CMU database is used for evaluating our proposed methods for face detection and alignment. Finally, the experimental results of all steps on CallTech database show the feasibility of our proposed model.
应用人工神经网络进行人脸识别
本文介绍了人脸识别系统各个步骤的一些新模型。在人脸检测步骤中,我们提出了一种AdaBoost和人工神经网络(ABANN)相结合的混合模型来有效地解决人脸检测过程。下一步,通过主动形状模型和多层感知器对ABANN检测到的标记人脸进行对齐。在这一步中,我们提出了一种新的基于多层感知机的二维局部纹理模型。该模型的分类器显著提高了对表情变化和轮廓模糊人脸的局部搜索精度和鲁棒性。在特征提取步骤中,我们描述了一种将基于几何特征的方法和独立分量分析法相结合的方法来提高提取效率。在人脸匹配步骤中,我们采用一种结合多个神经网络的人脸几何特征匹配模型。该模型将多个神经网络连接在一起,因此我们称之为多人工神经网络。MIT + CMU数据库用于评估我们提出的人脸检测和对齐方法。最后,在CallTech数据库上的实验结果表明了所提模型的可行性。
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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