论文标题
SMDS-NET:模型引导的光谱空间网络,用于高光谱图像Denoising
SMDS-Net: Model Guided Spectral-Spatial Network for Hyperspectral Image Denoising
论文作者
论文摘要
基于深度学习(DL)的高光谱图像(HSIS)DeNoising方法直接学习观察到的嘈杂图像和基础干净图像之间的非线性映射。他们通常不考虑HSI的物理特征,因此使它们缺乏解释性,这是了解其降解机制的关键。为了解决这个问题,我们引入了一种新颖的模型引导的HSI DeNoising的可解释网络。具体而言,我们完全考虑了HSI的空间冗余,光谱低级别和光谱空间特性,我们首先建立了基于子空间的多维稀疏模型。该模型首先将观察到的HSIS投射到低维正交子空间中,然后用多维词典代表投影图像。之后,将模型展开为一个名为SMDS-NET的端到端网络,该网络的基本模块与模型的降解过程和优化无缝连接。这使得SMD-NET传达了明确的物理含义,即学习HSIS的低级别和稀疏性。最后,通过端到端培训获得了所有关键变量,包括字典和阈值参数。广泛的实验和全面分析证实了我们方法对最新的HSI降解方法的能力和解释性。
Deep learning (DL) based hyperspectral images (HSIs) denoising approaches directly learn the nonlinear mapping between observed noisy images and underlying clean images. They normally do not consider the physical characteristics of HSIs, therefore making them lack of interpretability that is key to understand their denoising mechanism.. In order to tackle this problem, we introduce a novel model guided interpretable network for HSI denoising. Specifically, fully considering the spatial redundancy, spectral low-rankness and spectral-spatial properties of HSIs, we first establish a subspace based multi-dimensional sparse model. This model first projects the observed HSIs into a low-dimensional orthogonal subspace, and then represents the projected image with a multidimensional dictionary. After that, the model is unfolded into an end-to-end network named SMDS-Net whose fundamental modules are seamlessly connected with the denoising procedure and optimization of the model. This makes SMDS-Net convey clear physical meanings, i.e., learning the low-rankness and sparsity of HSIs. Finally, all key variables including dictionaries and thresholding parameters are obtained by the end-to-end training. Extensive experiments and comprehensive analysis confirm the denoising ability and interpretability of our method against the state-of-the-art HSI denoising methods.