Efficient and effective transformed image identification

M. Awrangjeb, Guojun Lu
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引用次数: 7

Abstract

The SIFT (scale invariant feature transform) has demonstrated its superior performance in identifying transformed images over many other approaches. However, both of its detection and matching stages are expensive, because a large number of keypoints are detected in the scale-space and each keypoint is described using a 128-dimensional vector. We present two possible solutions for feature-point reduction. First is to down scale the image before the SIFT keypoint detection and second is to use corners (instead of SIFT keypoints) which are visually significant, more robust, and much smaller in number than the SIFT keypoints. Either the curvature descriptor or the highly distinctive SIFT descriptors at corner locations can be used to represent corners.We then describe a new feature-point matching technique, which can be used for matching both the down-scaled SIFT keypoints and corners. Experimental results show that two feature-point reduction solutions combined with the SIFT descriptors and the proposed feature-point matching technique not only improve the computational efficiency and decrease the storage requirement, but also improve the transformed image identification accuracy (robustness).
高效、有效的变换图像识别
与许多其他方法相比,SIFT(尺度不变特征变换)在识别变换后的图像方面表现出优越的性能。然而,它的检测和匹配阶段都是昂贵的,因为在尺度空间中检测到大量的关键点,并且每个关键点都使用128维向量来描述。我们提出了两种可能的特征点约简解决方案。首先是在SIFT关键点检测之前缩小图像的比例,其次是使用角点(而不是SIFT关键点),这些角点在视觉上更重要,更鲁棒,而且数量比SIFT关键点少得多。曲率描述子或角点位置高度不同的SIFT描述子都可以用来表示角点。然后,我们描述了一种新的特征点匹配技术,该技术可以用于匹配缩小后的SIFT关键点和角点。实验结果表明,结合SIFT描述子和特征点匹配技术的两种特征点约简方案不仅提高了计算效率,降低了存储要求,而且提高了变换图像的识别精度(鲁棒性)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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