Abstract

One of the most important tasks in remote sensing image analysis is remote sensing image Change Detection (CD), and CD is the key to helping people obtain more accurate information about changes on the Earth’s surface. A Multi-Attention Guided Feature Fusion Network (MAFF-Net) for CD tasks has been designed. The network enhances feature extraction and feature fusion by building different blocks. First, a Feature Enhancement Module (FEM) is proposed. The FEM introduces Coordinate Attention (CA). The CA block embeds the position information into the channel attention to obtain the accurate position information and channel relationships of the remote sensing images. An updated feature map is obtained by using an element-wise summation of the input of the FEM and the output of the CA. The FEM enhances the feature representation in the network. Then, an attention-based Feature Fusion Module (FFM) is designed. It changes the previous idea of layer-by-layer fusion and chooses cross-layer aggregation. The FFM is to compensate for some semantic information missing as the number of layers increases. FFM plays an important role in the communication of feature maps at different scales. To further refine the feature representation, a Refinement Residual Block (RRB) is proposed. The RRB changes the number of channels of the aggregated features and uses convolutional blocks to further refine the feature representation. Compared with all compared methods, MAFF-Net improves the F1-Score scores by 4.9%, 3.2%, and 1.7% on three publicly available benchmark datasets, the CDD, LEVIR-CD, and WHU-CD datasets, respectively. The experimental results show that MAFF-Net achieves state-of-the-art (SOTA) CD performance on these three challenging datasets.

Highlights

  • Accepted: 22 January 2022Remote sensing image change detection (CD) uses two or more remote sensing images of the same area at different times to compare and analyze the atmospheric, spectral, and sensor information through artificial intelligence or mathematical statistics to obtain the change information of the area [1,2]

  • We propose the Feature Enhancement Module (FEM), which solves the problem that the features extracted from the backbone network have much interference information and the feature representation is not clear enough

  • We propose a Refinement Residual Block (RRB) using a residual structure, which can compensate for the shortcomings of using a single 3 × 3 convolutional kernel to refine the feature representation method

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Summary

Introduction

Accepted: 22 January 2022Remote sensing image change detection (CD) uses two or more remote sensing images of the same area at different times to compare and analyze the atmospheric, spectral, and sensor information through artificial intelligence or mathematical statistics to obtain the change information of the area [1,2]. CD is an important research direction in the field of remote sensing and plays a great role in many fields such as land planning, urban expansion [3,4], environmental monitoring [5,6,7], and disaster assessment [8] as a key technology for monitoring surface conditions. Compared with medium-resolution and low-resolution remote sensing images, HR remote sensing images have richer geometric and spatial information, which provide favorable conditions for humans to monitor surface changes more accurately. Extracting the rich feature information of HR remote sensing images, better focusing on the change regions, avoiding the interference of other factors, and reducing the interference of pseudo-changes are the key issues of remote sensing image CD research [9]

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