4.7 Article

Auto-Weighted Structured Graph-Based Regression Method for Heterogeneous Change Detection

Journal

REMOTE SENSING
Volume 14, Issue 18, Pages -

Publisher

MDPI
DOI: 10.3390/rs14184570

Keywords

change detection; heterogeneous data; graph; auto-weighted; image regression; structure

Funding

  1. Natural Science Foundation of Hunan Province, China [2021JJ30780]

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This paper proposes an auto-weighted structured graph (AWSG)-based regression method for heterogeneous change detection using remote sensing images. The method learns the image structure and performs structure regression to detect changes. Experimental results and comparisons demonstrate the effectiveness of the proposed approach.
Change detection using heterogeneous remote sensing images is an increasingly interesting and very challenging topic. To make the heterogeneous images comparable, some graph-based methods have been proposed, which first construct a graph for the image to capture the structure information and then use the graph to obtain the structural changes between images. Nonetheless, previous graph-based change detection approaches are insufficient in representing and exploiting the image structure. To address these issues, in this paper, we propose an auto-weighted structured graph (AWSG)-based regression method for heterogeneous change detection, which mainly consists of two processes: learning the AWSG to capture the image structure and using the AWSG to perform structure regression to detect changes. In the graph learning process, a self-conducted weighting strategy is employed to make the graph more robust, and the local and global structure information are combined to make the graph more informative. In the structure regression process, we transform one image to the domain of the other image by using the learned AWSG, where the high-order neighbor information hidden in the graph is exploited to obtain a better regression image and change image. Experimental results and comparisons on four real datasets with seven state-of-the-art methods demonstrate the effectiveness of the proposed approach.

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