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Efficient retrieval of face images based on curvelets and singular value decomposition

机译:基于Curvelet和奇异值分解的有效人脸图像检索

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Face Recognition Technology is one of the fastest growing field in the biometric industries. Although human seem to recognize faces with relative ease, machine recognition of faces is a challenging task. In this direction the paper proposed here is an automatic face recognition technique based on curvelets and Singular Value decomposition (SVD). Curve discontinuities present in the face images are very well captured by curvelet transform coefficients with different scales and orientations. Here 4 scale and 8 orientations of curvelets have been used. The extracted features still form a high dimensional subspace. To further reduce computational complexity SVD on curvelet transform coefficient is applied to get the optimized feature vector. This vector is used in classification of face images using mahalanobis distance classifier. The method has been experimented on two standard databases: YALE consisting of RGB images and ORL consisting of grayscale images. The method found to be working very satisfactorily for RGB images over grayscale images. The maximum accuracy obtained through hysteresis class test is 81.43%.
机译:人脸识别技术是生物识别行业中发展最快的领域之一。尽管人类似乎相对容易地识别面部,但是机器识别面部是一项具有挑战性的任务。在这个方向上,本文提出的是一种基于Curvelet和奇异值分解(SVD)的自动人脸识别技术。通过具有不同比例和方向的curvelet变换系数,可以很好地捕获面部图像中存在的曲线不连续性。在这里,使用了4个比例尺和8个方向的Curvelet。提取的特征仍然形成高维子空间。为了进一步降低计算复杂度,采用基于Curvelet变换系数的SVD来获得优化的特征向量。该向量用于使用马哈拉诺比斯距离分类器对人脸图像进行分类。该方法已在两个标准数据库上进行了实验:由RGB图像组成的YALE和由灰度图像组成的ORL。发现该方法对于RGB图像而不是灰度图像非常令人满意。通过磁滞等级测试获得的最大精度为81.43%。

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