论文标题
高光谱图像超分辨率的双阶段方法
Dual-Stage Approach Toward Hyperspectral Image Super-Resolution
论文作者
论文摘要
高光谱图像在牺牲空间分辨率时会产生高光谱分辨率。在不减少光谱分辨率的情况下,改善空间域的分辨率是一个非常具有挑战性的问题。由于发现高光谱图像在较大的光谱范围内表现出很高的相似性,因此在本文中,我们探索了一种用于高光谱图像超分辨率(DualSR)的新结构,导致双阶段设计,即粗阶段和阶段。在粗糙的阶段,在特定光谱范围内具有高相似性的五个带被分为三组,并且当前的频带被指导研究潜在的知识。在替代光谱融合机制的作用下,粗sr图像在频段中超级分辨。为了从全球角度构建模型,通过光谱角度约束进行了增强的反向投影方法,以精细阶段开发,以了解空间光谱一致性的内容,从而大大提高了性能增益。广泛的实验证明了所提出的粗阶段和精细阶段的有效性。此外,我们的网络在空间重建和频谱保真度方面还针对现有作品产生最新的结果。
Hyperspectral image produces high spectral resolution at the sacrifice of spatial resolution. Without reducing the spectral resolution, improving the resolution in the spatial domain is a very challenging problem. Motivated by the discovery that hyperspectral image exhibits high similarity between adjacent bands in a large spectral range, in this paper, we explore a new structure for hyperspectral image super-resolution (DualSR), leading to a dual-stage design, i.e., coarse stage and fine stage. In coarse stage, five bands with high similarity in a certain spectral range are divided into three groups, and the current band is guided to study the potential knowledge. Under the action of alternative spectral fusion mechanism, the coarse SR image is super-resolved in band-by-band. In order to build model from a global perspective, an enhanced back-projection method via spectral angle constraint is developed in fine stage to learn the content of spatial-spectral consistency, dramatically improving the performance gain. Extensive experiments demonstrate the effectiveness of the proposed coarse stage and fine stage. Besides, our network produces state-of-the-art results against existing works in terms of spatial reconstruction and spectral fidelity.