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Enhanced Local Texture Feature Sets for Face Recognition Under Difficult Lighting Conditions

机译:增强的局部纹理特征集,用于在困难光照条件下的人脸识别

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Making recognition more reliable under uncontrolled lighting conditions is one of the most important challenges for practical face recognition systems. We tackle this by combining the strengths of robust illumination normalization, local texture-based face representations, distance transform based matching, kernel-based feature extraction and multiple feature fusion. Specifically, we make three main contributions: 1) we present a simple and efficient preprocessing chain that eliminates most of the effects of changing illumination while still preserving the essential appearance details that are needed for recognition; 2) we introduce local ternary patterns (LTP), a generalization of the local binary pattern (LBP) local texture descriptor that is more discriminant and less sensitive to noise in uniform regions, and we show that replacing comparisons based on local spatial histograms with a distance transform based similarity metric further improves the performance of LBP/LTP based face recognition; and 3) we further improve robustness by adding Kernel principal component analysis (PCA) feature extraction and incorporating rich local appearance cues from two complementary sources—Gabor wavelets and LBP—showing that the combination is considerably more accurate than either feature set alone. The resulting method provides state-of-the-art performance on three data sets that are widely used for testing recognition under difficult illumination conditions: Extended Yale-B, CAS-PEAL-R1, and Face Recognition Grand Challenge version 2 experiment 4 (FRGC-204). For example, on the challenging FRGC-204 data set it halves the error rate relative to previously published methods, achieving a face verification rate of 88.1% at 0.1% false accept rate. Further experiments show that our preprocessing method outperforms several existing preprocessors for a range of feature sets, data sets and lighting conditions.
机译:在不受控制的照明条件下使识别更加可靠是实际人脸识别系统的最重要挑战之一。我们通过结合强大的照明规范化,基于局部纹理的面部表示,基于距离变换的匹配,基于内核的特征提取和多特征融合的优势来解决这一问题。具体来说,我们做出了三点主要贡献:1)我们提出了一条简单而有效的预处理链,该链可消除照明变化的大部分影响,同时仍保留识别所需的基本外观细节; 2)我们引入了本地三元模式(LTP),这是对本地化二进制模式(LBP)本地纹理描述符的一种概括,该描述符在统一区域中对噪声的判别度更高,对噪声的敏感度更低,并且我们展示了将基于本地空间直方图的比较替换为基于距离变换的相似性度量进一步提高了基于LBP / LTP的面部识别的性能; (3)通过添加内核主成分分析(PCA)特征提取,并结合来自两个互补源(Gabor小波和LBP)的丰富局部外观提示,进一步提高了鲁棒性,表明该组合比单独使用任一特征集要准确得多。所得方法在三个数据集上提供了最先进的性能,这些数据集广泛用于在困难的光照条件下测试识别能力:扩展Yale-B,CAS-PEAL-R1和面部识别Grand Challenge版本2实验4(FRGC -204)。例如,在具有挑战性的FRGC-204数据集上,与以前发布的方法相比,它的错误率降低了一半,以0.1%的错误接受率实现了88.1%的面部验证率。进一步的实验表明,在一系列特征集,数据集和照明条件下,我们的预处理方法优于几种现有的预处理器。

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