基于小波和光流的PCA/ICA多技术人脸识别

W. Al-Jawhar, A.M. Mansour, Z.M. Kuraz
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引用次数: 1

摘要

随着人们对人机界面和生物特征识别的兴趣日益浓厚,人脸识别自上世纪90年代初以来成为一个活跃的研究领域。许多当前的人脸识别算法使用无监督统计方法发现的人脸表示。通常,这些方法找到一组基图像,并将人脸表示为这些图像的线性组合。提出了一种基于小波子带和光流的主成分分析算法。与传统的PCA方法相比,该方法在157张人脸图像数据库上的识别准确率高达73.24%。在此基础上,采用独立分量分析(ICA)方法提高了图像的识别率。在同一数据库上比较了PCA和ICA的相对性能。ICA的识别准确率为90.45%,明显优于PCA。
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Multi technique face recognition using PCA/ICA with wavelet and Optical Flow
Together with the growing interest in the development of human and computer interface and biometric identification, human face recognition has become an active research area since early 90psilas. A number of current face recognition algorithms using face representations found by unsupervised statistical methods. Typically these methods find a set of basis images and represent faces as a linear combination of those images. This paper proposed an algorithm that uses PCA on wavelet subband and the optical flow (OF). In comparison with the traditional use of PCA, the proposed method gave a better recognition accuracy of up to (73.24%) on an image database of 157 human faces. Then a new method using the independent component analysis (ICA) was used to improve the recognition rate. The relative performance of PCA and ICA are compared on the same database mentioned before. A recognition accuracy rate of (90.45%) was achieved with the ICA which is much better than the PCA.
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