基于SHPCA空间的DT-CWT人脸检测

Yuehui Sun
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引用次数: 7

摘要

提出了一种基于谱直方图主成分分析空间(SHPCA)和支持向量机(SVM)的对偶树复小波变换(DT-CWT)的人脸检测算法。DT-CWT变换是近年来研究的一种变换,在不同尺度下,在6种不同的固定方向上具有良好的方向选择性。它对图像的冗余有限,并且比Gabor变换的计算速度快得多。因此,DT-CWT在某些图像信号处理领域,尤其是人脸图像的表示,是替代Gabor变换的一个很好的选择。在本文提出的人脸检测算法中,首先将图像与包括DT-CWT在内的不同滤波器进行卷积后,投影到SHPCA空间中,实现基于频率的特征减法。然后在SHPCA空间上应用SVM分类来检测图像中是否存在人脸。实验结果表明,DT-CWT在SHPCA空间上的表现明显优于Gabor变换。此外,在初步实验中,基于SHPCA空间的支持向量机在4000张对齐的人脸和6000张非人脸图像的训练集上进行了训练,得到了一个鲁棒的人脸和非人脸模式分类函数,并取得了满意的分类效果。讨论了节约计算时间和提高性能的几个问题
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Face Detection using DT-CWT on SHPCA Space
A novel face detection algorithm is presented by applying dual tree complex wavelets transform (DT-CWT) on spectral histogram PCA space (SHPCA) and support vector machine (SVM). DT-CWT is a transform recently studied, which provides good directional selectivity in six different fixed orientations at different scales. It has limited redundancy for images and is much faster than Gabor transform to compute. Hence, DT-CWT is a good choice to replace Gabor transform in some image signals processing fields especially for face images representation. In the face detection algorithm presented in this paper, images are first projected to SHPCA space after convolved with different filters including DT-CWT filters to achieve features subtraction based on frequency. Then on SHPCA space SVM classification is applied to detect whether faces exist in images or not. The experimental results show that DT-CWT performs much better than Gabor transform on SHPCA space. Furthermore, during preliminary experiments, SVM based on SHPCA space has been trained on a training set of 4000 faces aligned and 6000 non-face images, and a robust classifying function for face and non-face pattern is obtained, which gives the satisfying performance. Several questions about computation time saving and performance improvement are discussed
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