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Robust SIFT for dark face images recogntition

机译:强大的SIFT技术可识别黑脸图像

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摘要

Scale Invariant Feature Transform (SIFT) method is used to detect and describe local images features (keypoints) that are invariant to scale, rotation, translation and partially invariant to image illumination changing. However, this method gives unsatisfactory results under deteriorated lighting conditions. In other hand, the basic matching method of SIFT can produce false matched features, which leads to false matched objects. To improve the performance of SIFT in this situation, we propose in this paper to use a preprocessing method based on Gaussian filter and an amelioration of TT [5] to eliminate the variation of illumination, and a modified matching method to remove the false keypoints matched. Our proposed method is compared with a set of illumination normalization techniques (SSR, WD, SSQ, HOMO, TT and MSW) applied on dark face images. The experiments results confirm the superiority of the proposed method compared with the tested ones for face recognition under uncontrolled lighting conditions.
机译:尺度不变特征变换(SIFT)方法用于检测和描述局部尺度特征(关键点),这些局部尺度特征对于尺度,旋转,平移和图像照明变化部分不变。但是,该方法在恶化的照明条件下给出的结果并不令人满意。另一方面,SIFT的基本匹配方法会产生错误的匹配特征,从而导致对象的错误匹配。为了在这种情况下提高SIFT的性能,本文提出使用一种基于高斯滤波器和TT改进的预处理方法[5]来消除照明的变化,以及一种改进的匹配方法来去除匹配的错误关键点。 。我们提出的方法与应用于黑脸图像的一组照明归一化技术(SSR,WD,SSQ,HOMO,TT和MSW)进行了比较。实验结果证实了该方法与被测方法相比在不受控制的光照条件下的面部识别的优越性。

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