Homography Matrix-Based Local Motion Consistent Matching for Remote Sensing Images

Remote. Sens. Pub Date : 2023-07-02 DOI:10.3390/rs15133379
Jun-Yu Liu, Ao Liang, Enbo Zhao, MingQi Pang, Daijun Zhang
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Abstract

Feature matching is a fundamental task in the field of image processing, aimed at ensuring correct correspondence between two sets of features. Putative matches constructed based on the similarity of descriptors always contain a large number of false matches. To eliminate these false matches, we propose a remote sensing image feature matching method called LMC (local motion consistency), where local motion consistency refers to the property that adjacent correct matches have the same motion. The core idea of LMC is to find neighborhoods with correct motion trends and retain matches with the same motion. To achieve this, we design a local geometric constraint using a homography matrix to represent local motion consistency. This constraint has projective invariance and is applicable to various types of transformations. To avoid outliers affecting the search for neighborhoods with correct motion, we introduce a resampling method to construct neighborhoods. Moreover, we design a jump-out mechanism to exit the loop without searching all possible cases, thereby reducing runtime. LMC can process over 1000 putative matches within 100 ms. Experimental evaluations on diverse image datasets, including SUIRD, RS, and DTU, demonstrate that LMC achieves a higher F-score and superior overall matching performance compared to state-of-the-art methods.
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基于单应性矩阵的遥感图像局部运动匹配
特征匹配是图像处理领域的一项基本任务,旨在确保两组特征之间的正确对应。基于描述符相似性构建的假定匹配往往包含大量的假匹配。为了消除这些错误匹配,我们提出了一种称为LMC (local motion consistency)的遥感图像特征匹配方法,其中局部运动一致性是指相邻正确匹配具有相同运动的属性。LMC的核心思想是找到具有正确运动趋势的邻域,并保留相同运动的匹配项。为了实现这一点,我们设计了一个局部几何约束,使用单应性矩阵来表示局部运动一致性。该约束具有射影不变性,适用于各种类型的变换。为了避免异常值影响搜索具有正确运动的邻域,我们引入了重采样方法来构造邻域。此外,我们设计了一个跳出机制来退出循环而不搜索所有可能的情况,从而减少了运行时间。LMC可以在100毫秒内处理超过1000个假定匹配。在不同的图像数据集(包括SUIRD、RS和DTU)上的实验评估表明,与最先进的方法相比,LMC获得了更高的f分数和更好的整体匹配性能。
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