融合ICA空间、时间和局部特征的人脸识别

Jiajin Lei, Chao Lu
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引用次数: 7

摘要

独立分量分析(ICA)在人脸识别中得到了成功的应用。在实践中,可以推导出几种ICA表示。其中包括空间ICA、时空ICA和局部时空ICA,分别从空间域、时空域和局部区域提取人脸图像的特征。我们的工作表明,虽然时空ICA优于其他ICA表示,但可以通过融合各种ICA特征来进一步改进。然而,简单地将所有功能组合起来并不会像预期的那样有效。为此,本文提出了一种特征选择与组合的优化方法。我们在这里提出了一个特征选择的优化过程,关于从每个单独的ICA特征集中选择哪些特征和多少特征。实验结果表明,与单独使用时空ICA的人脸识别率86.43%相比,特征融合方法可以将人脸识别率提高到94.62%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusion of ICA Spatial, Temporal and Localized Features for Face Recognition
Independent component analysis (ICA) has found its application in face recognition successfully. In practice several ICA representations can be derived. Particularly they include spatial ICA, spatiotemporal ICA, and localized spatiotemporal ICA, which respectively extract features of face images in terms of space domain, time-space domain, and local region. Our work has shown that while spatiotemporal ICA outperforms other ICA representations, further improvement can be made by a fusion of variety of ICA features. However, simply combining all features will not work as well as expected. For this reason an optimization method for feature selection and combination is proposed in this paper. We present here an optimizing process of feature selection about which features and how many features from each individual ICA feature set are selected. The experimental results show that feature fusion method can improve face recognition rate up to 94.62% compared with that of 86.43% by using spatiotemporal ICA alone.
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