TL;DR
This paper introduces Ada3D, a novel adaptive 3D convolutional method that improves remote sensing image fusion by capturing fine details and integrating spectral-spatial information efficiently.
Contribution
The paper proposes a content-aware 3D convolutional paradigm with adaptive kernels and biases, enhancing fusion quality and computational efficiency over standard methods.
Findings
Achieves state-of-the-art performance on five datasets.
Effectively captures fine-grained spatial and spectral details.
Reduces computational complexity using group convolution.
Abstract
Remote sensing image fusion aims to create a high-resolution multi/hyper-spectral image from a high-resolution image with limited spectral information and a low-resolution image with abundant spectral data. Recently, deep learning (DL) techniques have shown significant effectiveness in this area. Most DL-based methods approach image fusion as a 2D problem by encoding spectral information into feature map channels. However, our research suggests that this strategy introduces notable spectral distortions. In contrast, some methods consider spectral data as an additional dimension, utilizing standard 3D convolutions to preserve spectral information. Nevertheless, in a standard 3D convolutional layer, the same set of kernels is applied across all input regions, which we have found to be sub-optimal for image fusion. Furthermore, standard 3D convolutions necessitate substantial computational…
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