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Face Recognition Using Overcomplete Independent Component Analysis

机译:使用不完全独立分量分析的人脸识别

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摘要

Most current face recognition algorithms find a set of basis functions in a subspace by training the input data. However, in many applications, the training data is limited or only a few training data are available. In the case, these classic algorithms degrade rapidly. The overcomplete independent component analysis (overcomplete ICA) can separate out more source signals than the input data. In this paper, we use the overcomplete ICA for face recognition with the limited training data. The experimental results show that the overcomplete ICA can improve efficiently the recognition rate.
机译:当前大多数人脸识别算法都是通过训练输入数据在子空间中找到一组基础函数的。但是,在许多应用中,训练数据是有限的,或者只有少数训练数据可用。在这种情况下,这些经典算法会迅速退化。过度独立的成分分析(过度独立ICA)可以分离出比输入数据更多的源信号。在本文中,我们将有限的训练数据用于过度识别的人脸识别。实验结果表明,ICA不完全可以有效提高识别率。

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