Learning to Pan-sharpening with Memories of Spatial Details
Maoxun Yuan, Tianyi Zhao, Bo Li, Xingxing Wei

TL;DR
This paper introduces a memory-based network that learns to generate high-resolution multispectral images without needing the panchromatic images during inference, enhancing pan-sharpening flexibility and performance.
Contribution
The novel Memory-based Spatial Details Network (MSDN) enables pan-sharpening using only multispectral images at inference by memorizing spatial details during training.
Findings
Achieves superior performance on satellite datasets
Constructs spatial details without PAN images
Integrates seamlessly with existing methods
Abstract
Pan-sharpening, as one of the most commonly used techniques in remote sensing systems, aims to inject spatial details from panchromatic images into multispectral images (MS) to obtain high-resolution multispectral images. Since deep learning has received widespread attention because of its powerful fitting ability and efficient feature extraction, a variety of pan-sharpening methods have been proposed to achieve remarkable performance. However, current pan-sharpening methods usually require the paired panchromatic (PAN) and MS images as input, which limits their usage in some scenarios. To address this issue, in this paper we observe that the spatial details from PAN images are mainly high-frequency cues, i.e., the edges reflect the contour of input PAN images. This motivates us to develop a PAN-agnostic representation to store some base edges, so as to compose the contour for the…
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Taxonomy
TopicsAdvanced Image Fusion Techniques · Remote-Sensing Image Classification · Infrared Target Detection Methodologies
MethodsBalanced Selection
