Euler-inspired Decoupling Neural Operator for Efficient Pansharpening

arXiv cs.CV / 4/15/2026

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Key Points

  • The paper introduces the Euler-inspired Decoupling Neural Operator (EDNO) for pansharpening, reframing image fusion as a continuous frequency-domain functional mapping between PAN spatial detail and LR-MS spectral content.
  • EDNO uses Euler’s formula to move features into a polar coordinate representation and introduces an Euler Feature Interaction Layer (EFIL) with explicit and implicit interaction paths.
  • The explicit component applies a linear weighting scheme to simulate phase rotation for adaptive geometric alignment, while the implicit component uses a feed-forward network to better model spectral distributions and improve color consistency.
  • By operating in the frequency domain, EDNO aims to capture global receptive fields with discretization-invariance, addressing common diffusion-based operator issues like spectral-spatial blurring and high compute from iterative sampling.
  • Experiments across three datasets report a better efficiency–performance trade-off than heavier architectures, positioning EDNO as a more computationally feasible alternative for high-quality pansharpening.

Abstract

Pansharpening aims to synthesize high-resolution multispectral (HR-MS) images by fusing the spatial textures of panchromatic (PAN) images with the spectral information of low-resolution multispectral (LR-MS) images. While recent deep learning paradigms, especially diffusion-based operators, have pushed the performance boundaries, they often encounter spectral-spatial blurring and prohibitive computational costs due to their stochastic nature and iterative sampling. In this paper, we propose the Euler-inspired Decoupling Neural Operator (EDNO), a physics-inspired framework that redefines pansharpening as a continuous functional mapping in the frequency domain. Departing from conventional Cartesian feature processing, our EDNO leverages Euler's formula to transform features into a polar coordinate system, enabling a novel explicit-implicit interaction mechanism. Specifically, we develop the Euler Feature Interaction Layer (EFIL), which decouples the fusion task into two specialized modules: 1) Explicit Feature Interaction Module, utilizing a linear weighting scheme to simulate phase rotation for adaptive geometric alignment; and 2) Implicit Feature Interaction Module, employing a feed-forward network to model spectral distributions for superior color consistency. By operating in the frequency domain, EDNO inherently captures global receptive fields while maintaining discretization-invariance. Experimental results on the three datasets demonstrate that EDNO offers a superior efficiency-performance balance compared to heavyweight architectures.

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