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A Feature Fusion Method for Effective Face Recognition Under Variant Illumination and Noisy Conditions

机译:一种在变光照度和噪声条件下有效人脸识别的特征融合方法

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Faces extracted in bad light are affected in terms of unequal contrast, noise, and variant illumination. These kinds of disruptions decrease the accuracy of facial authentication real and complex environments. In this paper, a feature fusion method is provided to achieve illumination-robust face recognition. In this model, the Gaussian filter and Gabor filters are applied on facial image to generate the illumination-variant features. Each of the Gaussian and Gabor face is processed by LBP filter to generate the effective visual description for face. A block-level feature fusion is applied on Gaussian-LBP and Gabor-LBP faces to generate the composite feature pattern. This most relevant and adaptive feature patterns are processed on SVM classifier to recognize the face accurately. The proposed feature fusion model is applied on illumination, noise, and contrast-variant sample sets of extended Yale databases. The comparative results against SVM, KNN, and ANN methods verified the significant gain in accuracy of facial identification in complex environmental conditions.
机译:在不良光线下提取的脸部会受到不均等的对比度,噪声和变化的光照的影响。这些破坏降低了真实和复杂环境中面部认证的准确性。本文提出了一种特征融合方法来实现对光照鲁棒的人脸识别。在该模型中,将高斯滤波器和Gabor滤波器应用于面部图像以生成照度变化特征。通过LBP滤波器对高斯脸和Gabor脸进行处理,以生成有效的脸部视觉描述。将块级特征融合应用于Gaussian-LBP和Gabor-LBP面上以生成复合特征图案。在SVM分类器上处理此最相关和自适应的特征模式,以准确识别人脸。提出的特征融合模型应用于扩展的耶鲁数据库的照明,噪声和对比度变化样本集。与SVM,KNN和ANN方法的比较结果证明,在复杂的环境条件下,面部识别的准确性有了显着提高。

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