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An Analysis of the Factors Affecting Keypoint Stability in Scale-Space

机译:尺度空间中影响关键点稳定性的因素分析

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The most popular image matching algorithm SIFT, introduced by D. Lowe a decade ago, has proven to be sufficiently scale invariant to be used in numerous applications. In practice, however, scale invariance may be weakened by various sources of error inherent to the SIFT implementation affecting the stability and accuracy of keypoint detection. The density of the sampling of the Gaussian scale-space and the level of blur in the input image are two of these sources. This article presents a numerical analysis of their impact on the extracted keypoints stability. Such an analysis has both methodological and practical implications, on how to compare feature detectors and on how to improve SIFT. We show that even with a significantly oversampled scale-space numerical errors prevent from achieving perfect stability. Usual strategies to filter out unstable detections (e.g., poorly contrasted extrema) are shown to be inefficient. We also prove that the effect of the error in the assumption on the initial blur is asymmetric and that the method is strongly degraded in the presence of aliasing or without a correct assumption on the camera blur. This analysis leads to a series of practical recommendations.
机译:十年前D. Lowe提出的最流行的图像匹配算法SIFT已被证明具有足够的尺度不变性,可以在众多应用中使用。然而,实际上,SIFT实现固有的各种误差源可能会削弱尺度不变性,从而影响关键点检测的稳定性和准确性。这些源中有两个是高斯比例空间的采样密度和输入图像中的模糊程度。本文对它们对提取的关键点稳定性的影响进行了数值分析。这样的分析在方法比较和特征检测以及SIFT改进方面都具有方法论和实践意义。我们表明,即使在过度采样的比例空间中,数字误差也无法实现完美的稳定性。过滤掉不稳定检测(例如,对比度极差的极端)的常规策略被证明是无效的。我们还证明了假设误差对初始模糊的影响是不对称的,并且该方法在出现混叠或对相机模糊没有正确假设的情况下会严重退化。该分析得出了一系列实用建议。

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