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Scale-Space Decomposition and Nearest Linear Combination Based Approach for Face Recognition

机译:基于尺度空间分解和最近线性组合的人脸识别方法

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Among many illumination robust approaches, scale-space decomposition based methods play an important role to reduce the lighting effects in face images. However, most of the existing scale-space decomposition methods perform recognition, based on the illumination-invariant small-scale features only. We propose a scale-space decomposition based face recognition approach that extracts the features of different scales through the TV+L1 model and wavelet transform. The approach represents a subject's face image via a subspace spanned by linear combination of the features of different scales. To decide the proper identity of the probe, the nearest neighbor (NN) approach is used to measure the similarities between a probe face image and subspace representations of gallery face images. Experiments on various benchmarks have demonstrated that the system outperforms many recognition methods in the same category.
机译:在许多照明鲁棒方法中,基于比例空间分解的方法在减少面部图像中的照明效果方面起着重要作用。然而,大多数现有的尺度空间分解方法仅基于光照不变的小尺度特征来执行识别。我们提出了一种基于尺度空间分解的人脸识别方法,该方法通过TV + L1模型和小波变换来提取不同尺度的特征。该方法通过子空间表示对象的面部图像,该子空间由不同比例尺特征的线性组合所跨越。为了确定探针的正确身份,可使用最近邻(NN)方法来测量探针面部图像与画廊面部图像的子空间表示之间的相似性。在各种基准上进行的实验表明,该系统的性能优于同一类别中的许多识别方法。

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