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Content-Adaptive Non-Local Convolution for Remote Sensing Pansharpening | IEEE Conference Publication | IEEE Xplore

Content-Adaptive Non-Local Convolution for Remote Sensing Pansharpening


Abstract:

Currently, machine learning-based methods for remote sensing pansharpening have progressed rapidly. However, existing pansharpening methods often do not fully exploit dif...Show More

Abstract:

Currently, machine learning-based methods for remote sensing pansharpening have progressed rapidly. However, existing pansharpening methods often do not fully exploit differentiating regional information in non-local spaces, thereby limiting the effectiveness of the methods and resulting in redundant learning parameters. In this pa-per, we introduce a socalled content-adaptive non-local convolution (CANConv), a novel method tailored for re-mote sensing image pansharpening. Specifically, CANConv employs adaptive convolution, ensuring spatial adaptability, and incorporates non-local self-similarity through the similarity relationship partition (SRP) and the partition-wise adaptive convolution (PWAC) sub-modules. Furthermore, we also propose a corresponding network architecture, called CANNet, which mainly utilizes the multi-scale self-similarity. Extensive experiments demonstrate the superior performance of CANConv, compared with recent promising fusion methods. Besides, we substantiate the method's effectiveness through visualization, ablation experiments, and comparison with existing methods on multiple test sets. The source code is publicly available at https://github.com/duany11/CANConv.
Date of Conference: 16-22 June 2024
Date Added to IEEE Xplore: 16 September 2024
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Conference Location: Seattle, WA, USA

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