DASNet: Dual attentive fully convolutional Siamese networks for change detection in high-resolution satellite images

J Chen, Z Yuan, J Peng, L Chen… - IEEE Journal of …, 2020 - ieeexplore.ieee.org
J Chen, Z Yuan, J Peng, L Chen, H Huang, J Zhu, Y Liu, H Li
IEEE Journal of Selected Topics in Applied Earth Observations and …, 2020ieeexplore.ieee.org
Change detection is a basic task of remote sensing image processing. The research
objective is to identify the change information of interest and filter out the irrelevant change
information as interference factors. Recently, the rise in deep learning has provided new
tools for change detection, which have yielded impressive results. However, the available
methods focus mainly on the difference information between multitemporal remote sensing
images and lack robustness to pseudochange information. To overcome the lack of …
Change detection is a basic task of remote sensing image processing. The research objective is to identify the change information of interest and filter out the irrelevant change information as interference factors. Recently, the rise in deep learning has provided new tools for change detection, which have yielded impressive results. However, the available methods focus mainly on the difference information between multitemporal remote sensing images and lack robustness to pseudochange information. To overcome the lack of resistance in current methods to pseudochanges, in this article, we propose a new method, namely, dual attentive fully convolutional Siamese networks, for change detection in high-resolution images. Through the dual attention mechanism, long-range dependencies are captured to obtain more discriminant feature representations to enhance the recognition performance of the model. Moreover, the imbalanced sample is a serious problem in change detection, i.e., unchanged samples are much more abundant than changed samples, which is one of the main reasons for pseudochanges. We propose the weighted double-margin contrastive loss to address this problem by punishing attention to unchanged feature pairs and increasing attention to changed feature pairs. The experimental results of our method on the change detection dataset and the building change detection dataset demonstrate that compared with other baseline methods, the proposed method realizes maximum improvements of 2.9% and 4.2%, respectively, in the F1 score. Our PyTorch implementation is available at https://github.com/lehaifeng/DASNet.
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