Wavelet-Guided Dual-Frequency Encoding for Remote Sensing Change Detection
Xiaoyang Zhang, Guodong Fan, Guang-Yong Chen, Zhen Hua, Jinjiang Li, Min Gan, C. L. Philip Chen

TL;DR
This paper introduces WGDF, a novel dual-frequency encoding method using wavelet transforms and transformers to improve change detection accuracy in remote sensing imagery by capturing both local details and global structures.
Contribution
The paper proposes a wavelet-guided dual-frequency encoding framework that combines wavelet decomposition, dual-frequency feature enhancement, and transformer-based global modeling for improved change detection.
Findings
WGDF outperforms state-of-the-art methods in accuracy.
The method effectively reduces edge ambiguity.
It demonstrates robustness across multiple datasets.
Abstract
Change detection in remote sensing imagery plays a vital role in various engineering applications, such as natural disaster monitoring, urban expansion tracking, and infrastructure management. Despite the remarkable progress of deep learning in recent years, most existing methods still rely on spatial-domain modeling, where the limited diversity of feature representations hinders the detection of subtle change regions. We observe that frequency-domain feature modeling particularly in the wavelet domain an amplify fine-grained differences in frequency components, enhancing the perception of edge changes that are challenging to capture in the spatial domain. Thus, we propose a method called Wavelet-Guided Dual-Frequency Encoding (WGDF). Specifically, we first apply Discrete Wavelet Transform (DWT) to decompose the input images into high-frequency and low-frequency components, which are…
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