预测Matchability

Wilfried Hartmann, M. Havlena, K. Schindler
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引用次数: 102

摘要

许多计算机视觉算法的初始步骤是兴趣点提取和匹配。在较大的图像集中,图像间兴趣点描述符的成对匹配是一个重要的瓶颈。对于一个图像中的每个描述符,必须找到另一个图像中的(近似)最近邻居,并与第二最近邻居进行检查,以确保对应关系是明确的。在这里,我们提出的问题是如何在不丢失匹配的情况下最好地抽取兴趣点列表,即我们的目标是通过提前过滤掉那些无法在匹配阶段存活的点来加速匹配。结果表明,最好的滤波标准不是兴趣点检测器的响应,这并不奇怪:检测的目标是可重复的和良好定位的点,而选择的目标是描述符可以成功匹配的点。我们表明,实际上可以学习预测哪些描述符是匹配的,从而在不丢失太多匹配的情况下显著减少兴趣点的数量。我们表明,这种策略虽然简单,但在每张图像的点数相同的情况下,极大地提高了匹配成功率。此外,我们将预测嵌入到最先进的运动结构管道中,并证明它在系统级别上也优于其他选择方法。
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Predicting Matchability
The initial steps of many computer vision algorithms are interest point extraction and matching. In larger image sets the pairwise matching of interest point descriptors between images is an important bottleneck. For each descriptor in one image the (approximate) nearest neighbor in the other one has to be found and checked against the second-nearest neighbor to ensure the correspondence is unambiguous. Here, we asked the question how to best decimate the list of interest points without losing matches, i.e. we aim to speed up matching by filtering out, in advance, those points which would not survive the matching stage. It turns out that the best filtering criterion is not the response of the interest point detector, which in fact is not surprising: the goal of detection are repeatable and well-localized points, whereas the objective of the selection are points whose descriptors can be matched successfully. We show that one can in fact learn to predict which descriptors are matchable, and thus reduce the number of interest points significantly without losing too many matches. We show that this strategy, as simple as it is, greatly improves the matching success with the same number of points per image. Moreover, we embed the prediction in a state-of-the-art Structure-from-Motion pipeline and demonstrate that it also outperforms other selection methods at system level.
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