首页> 外文会议>2016 3rd International Conference on Green Technology and Sustainable Development >Improving the Face Recognition Accuracy under Varying Illumination Conditions for Local Binary Patterns and Local Ternary Patterns Based on Weber-Face and Singular Value Decomposition
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Improving the Face Recognition Accuracy under Varying Illumination Conditions for Local Binary Patterns and Local Ternary Patterns Based on Weber-Face and Singular Value Decomposition

机译:基于Weber-Face和奇异值分解的局部二值模式和三元模式在不同光照条件下的人脸识别精度

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This paper addresses a new approach based on the Weber-face and singular value decomposition (SVD) methods to improve the recognition accuracy for a face recognition system using local binary patterns and local ternary patterns in an illumination variation environment. The face images are the first extracted illumination-invariant components by the Weber-face method. Secondly, SVD is applied to the encoded images. Next, the training encoded images are extracted features based on local binary patterns or local ternary patterns. Finally, in the classification phase, the singular value matrix of a test image is combined with those of the training images to adjust the illumination of the test image before the features are extracted and classified. The recognition is performed using a nearest neighbor classifier with Chi-square as a dissimilarity measure. Experimental results on the extended Yale B database demonstrated the efficiency of our proposed method. Thus, the proposed approach is expected to contribute to the face recognition problem under varying illumination conditions.
机译:本文提出了一种基于Weber脸和奇异值分解(SVD)方法的新方法,以提高在光照变化环境中使用局部二进制模式和局部三元模式的面部识别系统的识别精度。脸部图像是通过韦伯脸部方法首先提取的照明不变分量。其次,将SVD应用于编码图像。接下来,基于局部二进制模式或局部三进制模式来提取训练编码图像。最后,在分类阶段,在特征被提取和分类之前,将测试图像的奇异值矩阵与训练图像的奇异值矩阵进行组合,以调整测试图像的照明度。使用具有卡方作为不相似度的最近邻分类器来执行识别。在扩展的Yale B数据库上的实验结果证明了我们提出的方法的有效性。因此,期望所提出的方法在变化的照明条件下有助于面部识别问题。

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