基于主成分分析的曲线纹理人脸识别

Shafin Rahman, S. M. Naim, Abdullah Al Farooq, M. Islam
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引用次数: 14

摘要

人脸识别的一个关键问题是如何利用有效的特征来表示人脸图像。迄今为止,文献中已经提出了许多特征提取技术。其中,基于内容的图像检索(CBIR)利用曲波变换捕获准确的纹理特征来表示图像。本文提出了一种利用曲线纹理特征进行人脸识别的新方法。通过变换后的人脸图像的均值和标准差等低阶统计量计算特征。由于曲线波的谱域不存在空穴和重叠,人脸图像中不会出现频率信息的丢失。此外,这种特征表示具有相当低的维数。因此,面空间内的计算变得更加容易。此外,特征的维度与人脸图像的分辨率无关。因此,它可以支持不同分辨率的人脸图像作为输入。为了构建分类器,我们对细分的连接特征表示应用主成分分析。用4级和5级曲线变换尺度对系统进行了测试。我们还通过在三个标准数据库中将人脸图像分成不同数量的细分进行了实验。实验结果表明,曲线纹理特征在人脸识别中取得了满意的效果。
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Curvelet texture based face recognition using Principal Component Analysis
A vital issue for face recognition is to represent a face image by effective and efficient features. To-date a numerous feature extraction techniques have been proposed in the literature. Among them, content based image retrieval (CBIR) using curvelet transform captures accurate texture features to represent the image. In this paper, we propose a novel face recognition method that uses curvelet texture features for face representation. Features are computed by low order statistics like mean and standard deviation of transformed face images. Since the spectral domain of curvelet has no hole or overlap, there is no loss of frequency information in face images. Moveover, such feature representation has considerably low dimension. Thus, computation within the face-space becomes easier. Furthermore, the dimension of features is independent of face image resolution. As a result, it can support face images of different resolution as input. To build the classifier, we apply PCA on the concatenated feature representation of subdivisions. We test our system with 4 and 5 levels of scales of curvelet transform. We also experiment by dividing the face image into different number of sub-divisions on three standard databases. The experimental results confirm that curvelet texture features achieve satisfactory performance for face recognition.
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