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Dual-Task Semantic Change Detection for Remote Sensing Images Using the Generative Change Field Module

Shao Xiang, Mi Wang, Xiaofan Jiang, Guangqi Xie, Zhiqi Zhang, Peng Tang

2021Remote Sensing53 citationsDOIOpen Access PDF

Abstract

With the advent of very-high-resolution remote sensing images, semantic change detection (SCD) based on deep learning has become a research hotspot in recent years. SCD aims to observe the change in the Earth’s land surface and plays a vital role in monitoring the ecological environment, land use and land cover. Existing research mainly focus on single-task semantic change detection; the problem they face is that existing methods are incapable of identifying which change type has occurred in each multi-temporal image. In addition, few methods use the binary change region to help train a deep SCD-based network. Hence, we propose a dual-task semantic change detection network (GCF-SCD-Net) by using the generative change field (GCF) module to locate and segment the change region; what is more, the proposed network is end-to-end trainable. In the meantime, because of the influence of the imbalance label, we propose a separable loss function to alleviate the over-fitting problem. Extensive experiments are conducted in this work to validate the performance of our method. Finally, our work achieves a 69.9% mIoU and 17.9 Sek on the SECOND dataset. Compared with traditional networks, GCF-SCD-Net achieves the best results and promising performances.

Topics & Concepts

Change detectionComputer scienceLand coverSemantic changeArtificial intelligenceTask (project management)Deep learningField (mathematics)Remote sensingLand useGeographyManagementCivil engineeringEngineeringMathematicsPure mathematicsEconomicsRemote-Sensing Image ClassificationRemote Sensing and Land UseLand Use and Ecosystem Services
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