Enhanced Graph Structure Representation for Unsupervised Heterogeneous Change Detection

Author:

Tang Yuqi123ORCID,Yang Xin1,Han Te1ORCID,Zhang Fangyan4,Zou Bin123,Feng Huihui123ORCID

Affiliation:

1. School of Geosciences and Info-Physics, Central South University, Changsha 410083, China

2. Key Laboratory of Metallogenic Prediction of Nonferrous Metals and Geological Environment Monitoring (Central South University), Ministry of Education, Changsha 410083, China

3. Key Laboratory of Spatio-Temporal Information and Intelligent Services, Ministry of Natural Resources, Changsha 410083, China

4. School of Advanced Interdisciplinary Studies, Ningxia University, Zhongwei 755000, China

Abstract

Heterogeneous change detection (CD) is widely applied in various fields such as urban planning, environmental monitoring, and disaster management. It enhances the accuracy and comprehensiveness of surface change monitoring by integrating multi-sensor remote sensing data. Scholars have proposed many graph-based methods to address the issue of incomparable heterogeneous images caused by imaging differences. However, these methods often overlook the influence of changes in vertex status on the graph structure, which limits their ability to represent image structural features. To tackle this problem, this paper presents an unsupervised heterogeneous CD method based on enhanced graph structure representation (EGSR). This method enhances the representation capacity of the graph structure for image structural features by measuring the unchanged probabilities of vertices, thereby making it easier to detect changes in heterogeneous images. Firstly, we construct the graph structure using image superpixels and measure the structural graph differences of heterogeneous images in the same image domain. Then, we calculate the unchanged probability of each vertex in the structural graph and reconstruct the graph structure using this probability. To accurately represent the graph structure, we adopt an iterative framework for enhancing the representation of the graph structure. Finally, at the end of the iteration, the final change map (CM) is obtained by binary segmentation of the graph vertices based on their unchanged probabilities. The effectiveness of this method is validated through experiments on four sets of heterogeneous image datasets and two sets of homogeneous image datasets.

Funder

National Natural Science Foundation of China

Scientific Research Innovation Project for Graduate Students in Hunan Province

Research Project on Monitoring and Early Warning Technologies for Implementation of Land Use Planning in Guangzhou City

Publisher

MDPI AG

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