Litcius/Paper detail

Multi-Modal Remote Sensing Image Matching Considering Co-Occurrence Filter

Yongxiang Yao, Yongjun Zhang, Yi Wan, Xinyi Liu, Xiaohu Yan, Jiayuan Li

2022IEEE Transactions on Image Processing157 citationsDOI

Abstract

Traditional image feature matching methods cannot obtain satisfactory results for multi-modal remote sensing images (MRSIs) in most cases because different imaging mechanisms bring significant nonlinear radiation distortion differences (NRD) and complicated geometric distortion. The key to MRSI matching is trying to weakening or eliminating the NRD and extract more edge features. This paper introduces a new robust MRSI matching method based on co-occurrence filter (CoF) space matching (CoFSM). Our algorithm has three steps: (1) a new co-occurrence scale space based on CoF is constructed, and the feature points in the new scale space are extracted by the optimized image gradient; (2) the gradient location and orientation histogram algorithm is used to construct a 152-dimensional log-polar descriptor, which makes the multi-modal image description more robust; and (3) a position-optimized Euclidean distance function is established, which is used to calculate the displacement error of the feature points in the horizontal and vertical directions to optimize the matching distance function. The optimization results then are rematched, and the outliers are eliminated using a fast sample consensus algorithm. We performed comparison experiments on our CoFSM method with the scale-invariant feature transform (SIFT), upright-SIFT, PSO-SIFT, and radiation-variation insensitive feature transform (RIFT) methods using a multi-modal image dataset. The algorithms of each method were comprehensively evaluated both qualitatively and quantitatively. Our experimental results show that our proposed CoFSM method can obtain satisfactory results both in the number of corresponding points and the accuracy of its root mean square error. The average number of obtained matches is namely 489.52 of CoFSM, and 412.52 of RIFT. As mentioned earlier, the matching effect of the proposed method was significantly greater than the three state-of-art methods. Our proposed CoFSM method achieved good effectiveness and robustness. Executable programs of CoFSM and MRSI datasets are published: https://skyearth.org/publication/project/CoFSM/.

Topics & Concepts

Artificial intelligenceFeature (linguistics)Pattern recognition (psychology)Computer visionScale spaceHistogramOutlierMatching (statistics)Feature extractionMathematicsFilter (signal processing)Computer scienceEuclidean distanceFeature vectorOrientation (vector space)Mean squared errorDistortion (music)Image registrationFeature detection (computer vision)Template matchingDistance transformScale (ratio)Image processingEdge detectionImage (mathematics)AlgorithmDisplacement (psychology)Interpolation (computer graphics)Transformation (genetics)Image resolutionAdvanced Image and Video Retrieval TechniquesSatellite Image Processing and PhotogrammetryRemote-Sensing Image Classification