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SIFT Features for Face Recognition

机译:SIFT人脸识别功能

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摘要

Scale Invariant Feature Transform (SIFT) has shown to be very powerful for general object detection/recognition. And recently, it has been applied in face recognition. However, the original SIFT algorithm may not be optimal for analyzing face images. In this paper, we analyze the performance of SIFT and study its deficiencies when applied to face recognition. We propose two new approaches: Keypoints-Preserving-SIFT (KPSIFT) which keeps all the initial keypoints as features and Partial-Descriptor-SIFT (PDSIFT) where keypoints detected at large scale and near face boundaries are described by a partial descriptor. Furthermore, we compare the performances of holistic approaches: Fisherface (FLDA), the null space approach (NLDA) and Eigenfeature Regularization and Extraction (ERE) with feature based approaches: SIFT, KPSIFT and PDSIFT. Experimental results on ORL and AR databases show that our proposed approaches KPSIFT and PDSIFT can achieve better performance than the original SIFT. Moreover, the performance of PDSIFT is significantly better than FLDA and NLDA. And PDSIFT can achieve the same or better performance than the most successful holistic approach ERE.
机译:SCALE不变功能转换(SIFT)已显示为通用对象检测/识别非常强大。最近,它已被应用于人脸识别。然而,原始SIFT算法可能不是用于分析面部图像的最佳选择。在本文中,我们分析了筛选的表现,并在申请面部识别时研究其缺陷。我们提出了两种新方法:将所有初始关键点(KPsift)保留了两种新方法:将所有初始关键点作为特征和部分描述符 - SIFT(PDSIFT),其中由局部描述符描述了以大规模和近域边界检测的关键点。此外,我们比较整体方法的性能:Fisherface(FLDA),NULL空间方法(NLDA)和实际规范正则化和提取(ERE),具有特征的方法:SIFT,KPSIFT和PDSIFT。 ORL和AR数据库的实验结果表明,我们的提出方法Kpsift和PDSIFT可以实现比原始筛选更好的性能。此外,PDSIFT的性能明显优于FLDA和NLDA。而PDSIFT可以达到比最成功的整体方法相同或更好的性能。

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