基于空间和频域联合学习的轻量化光谱图像去马赛克

Fangfang Wu;Tao Huang;Junwei Xu;Xun Cao;Weisheng Dong;Le Dong;Guangming Shi
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引用次数: 0

摘要

传统的光谱图像去马赛克算法依赖于像素的空间或光谱相关性进行重建。由于多光谱滤波阵列(MSFA)中的数据缺失,导致空间或光谱相关性估计不准确,导致重建结果较差,且这些算法耗时长。基于深度学习的光谱图像去马赛克方法直接学习二维光谱拼接图像与三维多光谱图像之间的非线性映射关系。然而,这些基于学习的方法只注重学习空间域的映射关系,而忽略了频域有价值的图像信息,导致重建质量有限。针对上述问题,本文提出了一种基于空间和频域信息联合学习的轻型光谱图像去马赛克方法。首先,提出了一种基于傅里叶变换的无参数光谱图像初始化策略,使光谱图像初始化效果更好,降低了后续光谱图像重建的难度;在此基础上,提出了一种有效的空间-频率互感器网络,该网络可以同时学习空间相关性和频域特性。与现有的基于学习的光谱图像去马赛克方法相比,该方法显著减少了模型参数的数量和计算复杂度。大量的模拟和真实数据实验表明,该方法明显优于现有的光谱图像去马赛克方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint Spatial and Frequency Domain Learning for Lightweight Spectral Image Demosaicing
Conventional spectral image demosaicing algorithms rely on pixels’ spatial or spectral correlations for reconstruction. Due to the missing data in the multispectral filter array (MSFA), the estimation of spatial or spectral correlations is inaccurate, leading to poor reconstruction results, and these algorithms are time-consuming. Deep learning-based spectral image demosaicing methods directly learn the nonlinear mapping relationship between 2D spectral mosaic images and 3D multispectral images. However, these learning-based methods focused only on learning the mapping relationship in the spatial domain, but neglected valuable image information in the frequency domain, resulting in limited reconstruction quality. To address the above issues, this paper proposes a novel lightweight spectral image demosaicing method based on joint spatial and frequency domain information learning. First, a novel parameter-free spectral image initialization strategy based on the Fourier transform is proposed, which leads to better initialized spectral images and eases the difficulty of subsequent spectral image reconstruction. Furthermore, an efficient spatial-frequency transformer network is proposed, which jointly learns the spatial correlations and the frequency domain characteristics. Compared to existing learning-based spectral image demosaicing methods, the proposed method significantly reduces the number of model parameters and computational complexity. Extensive experiments on simulated and real-world data show that the proposed method notably outperforms existing spectral image demosaicing methods.
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