LRNet: Change detection of high-resolution remote sensing imagery via strategy of localization-then-refinement
Huan Zhong, Chen Wu, Ziqi Xiao

TL;DR
LRNet is a novel change detection network for high-resolution remote sensing images that improves boundary accuracy through a localization-then-refinement strategy, utilizing innovative modules like LOP, C2A, HCA, and E2A.
Contribution
The paper introduces LRNet, a two-stage network with new modules for better boundary discrimination and multi-scale change detection in remote sensing imagery.
Findings
Outperforms 13 state-of-the-art methods on LEVIR-CD and WHU-CD datasets.
Achieves more precise boundary discrimination of change areas.
Effective in handling large and small change targets.
Abstract
Change detection, as a research hotspot in the field of remote sensing, has witnessed continuous development and progress. However, the discrimination of boundary details remains a significant bottleneck due to the complexity of surrounding elements between change areas and backgrounds. Discriminating the boundaries of large change areas results in misalignment, while connecting boundaries occurs for small change targets. To address the above issues, a novel network based on the localization-then-refinement strategy is proposed in this paper, namely LRNet. LRNet consists of two stages: localization and refinement. In the localization stage, a three-branch encoder simultaneously extracts original image features and their differential features for interactive localization of the position of each change area. To minimize information loss during feature extraction, learnable optimal pooling…
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Taxonomy
TopicsRemote-Sensing Image Classification
MethodsLocal Relation Network
