Face Recognition using Color and Edge Orientation Difference Histogram

S. A. Amiri, Muhammad Rajabinasab
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引用次数: 2

Abstract

Face recognition is a challenging problem because of different illuminations, poses, facial expressions, and occlusions. In this paper, a new robust face recognition method is proposed based on color and edge orientation difference histogram. Firstly, color and edge orientation difference histogram is extracted using color, color difference, edge orientation and edge orientation difference of the face image. Then, backward feature selection is employed to reduce the number of features. Finally, Canberra measure is used to assess the similarity between the images. Color and edge orientation difference histogram shows uniform color difference and edge orientation difference between two neighboring pixels. This histogram will be effective for face recognition due to different skin colors and different edge orientations of the face image, which leads to different light reflection. The proposed method is evaluated on Yale and ORL face datasets. These datasets are consisted of gray-scale face images under different illuminations, poses, facial expressions and occlusions. The recognition rate over Yale and ORL datasets is achieved 100% and 98.75% respectively. Experimental results demonstrate that the proposed method outperforms the existing methods in face recognition.
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基于颜色和边缘方向差异直方图的人脸识别
人脸识别是一个具有挑战性的问题,因为不同的照明、姿势、面部表情和遮挡。本文提出了一种基于颜色和边缘方向差直方图的鲁棒人脸识别方法。首先,利用人脸图像的颜色、色差、边缘方向和边缘方向差提取颜色和边缘方向差直方图;然后,使用反向特征选择来减少特征的数量。最后,采用堪培拉度量法对图像之间的相似性进行评估。颜色和边缘方向差直方图显示了两个相邻像素之间均匀的颜色和边缘方向差。这种直方图对于人脸识别是有效的,因为人脸图像的肤色不同,边缘方向不同,会导致不同的光反射。在Yale和ORL人脸数据集上对该方法进行了评价。这些数据集由不同光照、姿态、面部表情和遮挡下的灰度人脸图像组成。在耶鲁和ORL数据集上的识别率分别达到100%和98.75%。实验结果表明,该方法优于现有的人脸识别方法。
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