Hyperspectral image has become increasingly crucial due to its abundant spectral information. However, It has poor spatial resolution with the limitation of the current imaging mechanism. Nowadays, many convolutional neural networks have been proposed for the hyperspectral image super-resolution problem. However, convolutional neural network (CNN) based methods only consider the local information instead of the global one with the limited kernel size of receptive field in the convolution operation. In this paper, we design a network based on the transformer for fusing the low-resolution hyperspectral images and high-resolution multispectral images to obtain the high-resolution hyperspectral images. Thanks to the representing ability of the transformer, our approach is able to explore the intrinsic relationships of features globally. Furthermore, considering the LR-HSIs hold the main spectral structure, the network focuses on the spatial detail estimation releasing from the burden of reconstructing the whole data. It reduces the mapping space of the proposed network, which enhances the final performance. Various experiments and quality indexes show our approach's superiority compared with other state-of-the-art methods.
翻译:超光谱图像由于其丰富的光谱信息而变得越来越重要。 然而,由于当前成像机制的局限性,超光谱图像的空间分辨率已经越来越差。 如今,许多进化神经网络被提议解决超光谱图像超分辨率问题。 但是,基于进化神经网络的方法只考虑本地信息,而不是在进化操作中接收场的内核大小有限的全球信息。在本文中,我们设计了一个基于变压器的网络,用于引信低分辨率超光谱图像和高分辨率多光谱图像,以获取高分辨率超光谱图像。由于变压器的能代表能力,我们的方法能够在全球探索特征的内在关系。此外,考虑到LR-HSIs掌握主要光谱结构,该网络侧重于从重整整个数据的负担中释放出来的空间细节估计,从而减少拟议网络的绘图空间,从而增强最终性能。各种实验和质量指数显示了我们的方法与其他最新方法相比的优越性。