학술논문

A Novel Remote Sensing Image Change Detection Approach Based on Multilevel State Space Model
Document Type
Article
Source
IEEE Transactions on Geoscience and Remote Sensing; 2024, Vol. 62 Issue: 1 p1-14, 14p
Subject
Language
ISSN
01962892; 15580644
Abstract
Remote sensing image change detection (CD) is crucial for disaster assessment, land use change, and urban management. Most CD methods are realized by CNN and Transformer. However, these methods are not satisfied with modeling global dependencies while keeping a low computational complexity. Recently, the emergence of Mamba architectures based on state space models (SSMs) can remedy the above problems. In this article, we propose a visual Mamba-based multiscale feature extraction network to efficiently interactively fuse global and local information, which is named as MF-VMamba (MF: multiscale feature). First, a VMamba-based encoder is used to extract multiscale semantic features from bitemporal images. Then, a feature enhancement module (FEM) is proposed to capture the difference information between images. In addition, we employ a multilevel attention decoder (MAD) based on large kernel convolution (LKC) to obtain the information in spatial and spectral dimensions to realize the information interaction between global and local features. After the sequential processing of these three modules, the discriminative ability of changing objects is significantly improved. Notably, the computational complexity of our VMamba-based model grows linearly, which can significantly reduce the computational cost. In the experiments, our method performs well on CDD, DSIFN-CD, LEVIR-CD, and SYSU-CD datasets, with $F1$ scores and OA reaching $95.69\%/88.05\%/90.64\%{/86.95\%}$ and $98.97\%/96.01\%/99.07\%{/90.75\%}$ , respectively. The code can be accessed at https://github.com/121zzy/MF-Mamba.git.