Crossed Siamese Vision Graph Neural Network for Remote-Sensing Image Change Detection
Zhi-Hui You, Jiaxin Wang, Si-Bao Chen, Chris Ding, Guizhou Wang, Jin Tang, Bin Luo
Abstract
The development of deep learning in remote sensing (RS) visual tasks has led to remarkable progress in RS image change detection (CD). However, RS bi-temporal images cover complex and confusing scenes due to natural environmental factors, which presents challenges for CD task. How to effectively exploit long-range dependencies and sensitively discriminate real-changes with various scales from pseudo-changes are urgent problems. It is especially obvious for the changes of building structures man-made. This paper presents a CD approach named CSViG, which utilizes Siamese Vision Graph neural network (SViG) with crossed feature fusion. SViG acts as a feature extractor to capture richer short- and long-range dependencies. Crossed feature fusion consists of a horizontal feature fusion module (HFFM) and a vertical feature fusion module (VFFM). HFFM designs cross-concatenation (CC) way to reveal real-changes from pseudo-change in the same horizontal stage, after which global and local features are extracted by using attention mechanism and multi-scale depth-wise separable convolution. VFFM further fuses complementary content from vertical multiple stages to effectively represent change regions of different sizes (tiny or huge) by using attention mechanism. Extensive comparative experiments conducted on three available building change detection datasets demonstrate that the proposed method achieves better CD performance than previous counterparts.