学习在球体上识别正确的2D-2D直线对应

Haoang Li, Kai Chen, Ji Zhao, Jiangliu Wang, Pyojin Kim, Zhe Liu, Yunhui Liu
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引用次数: 2

摘要

给定一组假定的2D-2D线对应,我们的目标是识别正确的匹配。现有的方法利用几何约束。它们只适用于具有正交、平行和共平面的结构化场景。相比之下,我们提出的第一种方法适用于结构化和非结构化场景。我们利用球面上的空间规则来代替几何约束。具体来说,我们建议将直线对应映射为与球体相切的向量。我们使用这些向量来编码图像线的角度和位置变化,这比直接使用图像线的倾角,中点或端点更可靠和简洁。无论场景类型如何,从正确匹配映射的邻近向量都表现出称为局部趋势一致性的空间规律性。为了对这种规律性进行编码,我们设计了一个神经网络,并提出了一个新的损失函数来加强向量场的平滑性约束。此外,我们建立了一个大型的真实世界数据集,用于图像线匹配。实验表明,我们的方法在准确性、效率和鲁棒性方面都优于目前最先进的方法,并且具有很高的泛化能力。
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Learning to Identify Correct 2D-2D Line Correspondences on Sphere
Given a set of putative 2D-2D line correspondences, we aim to identify correct matches. Existing methods exploit the geometric constraints. They are only applicable to structured scenes with orthogonality, parallelism and coplanarity. In contrast, we propose the first approach suitable for both structured and unstructured scenes. Instead of geometric constraint, we leverage the spatial regularity on sphere. Specifically, we propose to map line correspondences into vectors tangent to sphere. We use these vectors to encode both angular and positional variations of image lines, which is more reliable and concise than directly using inclinations, midpoints or endpoints of image lines. Neighboring vectors mapped from correct matches exhibit a spatial regularity called local trend consistency, regardless of the type of scenes. To encode this regularity, we design a neural network and also propose a novel loss function that enforces the smoothness constraint of vector field. In addition, we establish a large real-world dataset for image line matching. Experiments showed that our approach outperforms state-of-the-art ones in terms of accuracy, efficiency and robustness, and also leads to high generalization.
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