IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2024)

A Heterogeneous Remote Sensing Image Matching Method for Urban Areas With Complex Terrain Based on 3D Spatial Relationship Constraints

  • Yao Zheng,
  • Shuwen Yang,
  • Yikun Li,
  • Jinsha Wu,
  • Zhuang Shi,
  • Ruixiong Kou

DOI
https://doi.org/10.1109/JSTARS.2024.3374327
Journal volume & issue
Vol. 17
pp. 6791 – 6804

Abstract

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Heterogeneous high-resolution remote sensing image matching will be disturbed by the differences in sensor type, imaging angle, height, and imaging time, and the matching difficulty is further increased in complex scenes with dense urban buildings and noticeable height differences. This article proposes a method for matching heterogeneous high-resolution remote sensing images based on partitioned feature extraction and three-dimensional spatial constraints. First, this article conducts image partitioning based on the geometric differences of ground objects. Two feature extraction methods, namely adaptive phase threshold and weighted moment map, are employed to extract feature points independently. To address the issue of inaccurate feature descriptions caused by drastic changes in viewing angles in buildings, we construct a robust feature descriptor by combining a multiscale phase weighted energy convolution histogram with a new gradient location orientation histogram-like local feature descriptor. In addition, a new similarity measure incorporating three-dimensional spatial constraints and the marginalizing sample consensus method is applied to eliminate mismatched point pairs, ensuring the acquisition of precise matching points. Based on the feature detection results of two different synthetic data sets, it is evident that the proposed detector outperforms the three classical detectors in terms of repeatability and uniformity. Ultimately, the matching performance is experimentally verified on six groups of heterogeneous high-resolution remote sensing images. The experimental results show that the proposed method significantly outperforms RIFT, HAPCG, and MS-HLMO methods and achieves the best matching accuracy results.

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