通用视场检测的几何和概率图像不相似度量

Marcel Brückner, Ferid Bajramovic, Joachim Denzler
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引用次数: 9

摘要

检测具有共同视场的图像对是许多计算机视觉任务的重要前提。通常,使用共同的局部特征作为识别此类图像对的标准。然而,这种方法需要一种可靠的方法来匹配特征,这通常是一个非常困难的问题,特别是在场景中有宽基线或模糊的情况下。针对共同视场问题,我们提出了两种新的解决方法。第一种方法仍然是基于特征匹配。而不是要求一个非常低的假阳性率的特征匹配,然而,使用几何约束来评估匹配可能包含许多假阳性。第二种方法通过评估对应概率的熵完全避免了特征的硬匹配。我们以不同的难度对三种不同的手标记场景进行了定量实验。在中等难度的场景中,我们提出的方法与经典的基于匹配的方法具有相似的效果。在最具挑战性的具有宽基线和许多模糊性的场景中,经典方法的性能会下降,而我们的方法受到的影响要小得多,并且仍然可以产生良好的结果。因此,我们的方法在综合评估中显示出最佳的整体性能。
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Geometric and probabilistic image dissimilarity measures for common field of view detection
Detecting image pairs with a common field of view is an important prerequisite for many computer vision tasks. Typically, common local features are used as a criterion for identifying such image pairs. This approach, however, requires a reliable method for matching features, which is generally a very difficult problem, especially in situations with a wide baseline or ambiguities in the scene. We propose two new approaches for the common field of view problem. The first one is still based on feature matching. Instead of requiring a very low false positive rate for the feature matching, however, geometric constraints are used to assess matches which may contain many false positives. The second approach completely avoids hard matching of features by evaluating the entropy of correspondence probabilities. We perform quantitative experiments on three different hand labeled scenes with varying difficulty. In moderately difficult situations with a medium baseline and few ambiguities in the scene, our proposed methods give similarly good results to the classical matching based method. On the most challenging scene having a wide baseline and many ambiguities, the performance of the classical method deteriorates, while ours are much less affected and still produce good results. Hence, our methods show the best overall performance in a combined evaluation.
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