Realistic hyperspectral image (HSI) super-resolution (SR) techniques aim to generate a high-resolution (HR) HSI with higher spectral and spatial fidelity from its low-resolution (LR) counterpart. The generative adversarial network (GAN) has proven to be an effective deep learning framework for image super-resolution. However, the optimisation process of existing GAN-based models frequently suffers from the problem of mode collapse, leading to the limited capacity of spectral-spatial invariant reconstruction. This may cause the spectral-spatial distortion on the generated HSI, especially with a large upscaling factor. To alleviate the problem of mode collapse, this work has proposed a novel GAN model coupled with a latent encoder (LE-GAN), which can map the generated spectral-spatial features from the image space to the latent space and produce a coupling component to regularise the generated samples. Essentially, we treat an HSI as a high-dimensional manifold embedded in a latent space. Thus, the optimisation of GAN models is converted to the problem of learning the distributions of high-resolution HSI samples in the latent space, making the distributions of the generated super-resolution HSIs closer to those of their original high-resolution counterparts. We have conducted experimental evaluations on the model performance of super-resolution and its capability in alleviating mode collapse. The proposed approach has been tested and validated based on two real HSI datasets with different sensors (i.e. AVIRIS and UHD-185) for various upscaling factors and added noise levels, and compared with the state-of-the-art super-resolution models (i.e. HyCoNet, LTTR, BAGAN, SR- GAN, WGAN).
翻译:高分辨率超光谱超光谱超分辨率(HISI)超分辨率(SR)技术旨在产生高分辨率(HR)高光谱和空间对低分辨率(LR)对应方的超光谱超光谱超分辨率(HSI)超分辨率(HIS)超分辨率(SR)技术,目的是从低分辨率(LR)中产生高分辨率(HR)HSI(HR)高光谱和空间忠诚度(HSI)高分辨率(HR) HSI)技术。为缓解模式崩溃问题,这项工作提出了新型GAN(GAN)模型,加上一个潜伏的编码(LE-GAN),可以将生成的光谱光谱特性从图像空间映射到潜伏空间,并产生使生成的样本正规化。基本上,我们将HSI(HSI)的光谱空间空间空间空间空间空间空间空间空间空间空间空间空间空间空间空间空间空间定位模型,将GAND(GAND)模型的优化转化为与高分辨率(HSI) 高分辨率(HSI) 高级分辨率(HSI) 的原始分辨率分析模型和高分辨率(HSI) 高级分辨率(HSI) 和高分辨率(HSI) 的模拟) 的模型的模型分析,进行更精确度分析。