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MS-HLMO: Multiscale Histogram of Local Main Orientation for Remote Sensing Image Registration

Chenzhong Gao, Wei Li, Ran Tao, Qian Du

2022IEEE Transactions on Geoscience and Remote Sensing74 citationsDOIOpen Access PDF

Abstract

Multi-source image registration is challenging due to intensity, rotation, and scale differences among the images. Considering the characteristics and differences of multi-source remote sensing images, a feature-based registration algorithm named Multi-scale Histogram of Local Main Orientation (MS-HLMO) is proposed. Harris corner detection is first adopted to generate feature points. The HLMO feature of each Harris feature point is extracted on a Partial Main Orientation Map (PMOM) with a Generalized Gradient Location and Orientation Histogram-like (GGLOH) feature descriptor, which provides high intensity, rotation, and scale invariance. The feature points are matched through a multi-scale matching strategy. Comprehensive experiments on 17 multi-source remote sensing scenes demonstrate that the proposed MS-HLMO and its simplified version MS-HLMO<sup>+</sup> outperform other competitive registration algorithms in terms of effectiveness and generalization.

Topics & Concepts

HistogramArtificial intelligenceOrientation (vector space)Feature (linguistics)Computer scienceImage registrationComputer visionRotation (mathematics)Pattern recognition (psychology)Feature extractionScale (ratio)Matching (statistics)Remote sensingImage (mathematics)MathematicsGeographyGeometryPhilosophyStatisticsLinguisticsCartographyAdvanced Image and Video Retrieval TechniquesRobotics and Sensor-Based LocalizationSatellite Image Processing and Photogrammetry
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