网格引导的稀疏拉普拉斯一致性鲁棒特征匹配

IF 13.7
Yifan Xia;Jiayi Ma
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引用次数: 0

摘要

特征匹配是计算机视觉中广泛应用的一个基本问题。基于光滑约束的概念,提出了一种新颖有效的网格引导稀疏拉普拉斯共识算法。为了解决严重变形和独立运动等具有挑战性的场景,我们设计了基于网格的自适应匹配指导,以构建基于运动相干性的多重变换。具体而言,我们通过运动统计获得一组精确而稀疏的种子对应,便于自适应数量的候选对应集的生成。此外,我们提出了一种基于图拉普拉斯的对应剪枝的创新公式,其中映射函数估计被表述为贝叶斯模型。我们利用以种子对应作为最优收敛初始化的EM算法来解决这个问题。利用稀疏近似来减少时间空间负担。进行了一组全面的实验,以证明我们的方法在对严重变形的鲁棒性和各种描述符的泛化性以及对多运动的泛化性方面优于其他最先进的方法。此外,在几何估计、图像配准、闭环检测和视觉定位方面的实验也突出了我们的方法在不同场景下对高级任务的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grid-Guided Sparse Laplacian Consensus for Robust Feature Matching
Feature matching is a fundamental concern widely employed in computer vision applications. This paper introduces a novel and efficacious method named Grid-guided Sparse Laplacian Consensus, rooted in the concept of smooth constraints. To address challenging scenes such as severe deformation and independent motions, we devise grid-based adaptive matching guidance to construct multiple transformations based on motion coherence. Specifically, we obtain a set of precise yet sparse seed correspondences through motion statistics, facilitating the generation of an adaptive number of candidate correspondence sets. In addition, we propose an innovative formulation grounded in graph Laplacian for correspondence pruning, wherein mapping function estimation is formulated as a Bayesian model. We solve this utilizing EM algorithm with seed correspondences as initialization for optimal convergence. Sparse approximation is leveraged to reduce the time-space burden. A comprehensive set of experiments are conducted to demonstrate the superiority of our method over other state-of-the-art methods in both robustness to serious deformations and generalizability for various descriptors, as well as generalizability to multi motions. Additionally, experiments in geometric estimation, image registration, loop closure detection, and visual localization highlight the significance of our method across diverse scenes for high-level tasks.
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