首页> 外文会议>International Conference on Artificial Intelligence (IC-AI'03) Vol.1; Jun 23-26, 2003; Las Vegas, Nevada, USA >An Analysis of Appearance-based Statistical Methods and Autoassociative Neural Networks on Face Recognition
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An Analysis of Appearance-based Statistical Methods and Autoassociative Neural Networks on Face Recognition

机译:基于外观的统计方法和自联想神经网络的面部识别分析

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An experimental Study on the face recognition problem was performed using Autoassociative Neural Networks (AANN) and appearance-based statistical methods namely. Principal Component Analysis (PCA), Linear Discriminant Analysis (LDA), and Independent Component Analysis (ICA). Various experiments were conducted using FERET database and FERET Evaluation Methodology to evaluate the performance of the four methods on frontal images under different conditions such as rotations, illumination changes and scale reductions. The results show that PCA outperforms LDA, ICA and AANN in general and under different illumination conditions, and LDA follows PCA according to the performance results. On the other hand, PCA and LDA show a great sensitivity to rotations while ICA and AANN are not sensitive to rotations. The results also show that all the approaches are sensitive lo scale reductions. Compatibility of experimental evaluations with the theoretically expected results is also demonstrated.
机译:使用自动联想神经网络(AANN)和基于外观的统计方法对人脸识别问题进行了实验研究。主成分分析(PCA),线性判别分析(LDA)和独立成分分析(ICA)。使用FERET数据库和FERET评估方法进行了各种实验,以评估这四种方法在不同条件下(例如旋转,光照变化和缩小比例)对正面图像的性能。结果表明,在不同的光照条件下,PCA的性能总体上优于LDA,ICA和AANN,根据性能结果,LDA遵循PCA。另一方面,PCA和LDA对旋转表现出很大的敏感性,而ICA和AANN对旋转则不敏感。结果还表明,所有方法都是敏感的低尺度降低。还证明了实验评估与理论预期结果的兼容性。

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