Hyperspectral image (HSI) with narrow spectral bands can capture rich spectral information, but it sacrifices its spatial resolution in the process. Many machine-learning-based HSI super-resolution (SR) algorithms have been proposed recently. However, one of the fundamental limitations of these approaches is that they are highly dependent on image and camera settings and can only learn to map an input HSI with one specific setting to an output HSI with another. However, different cameras capture images with different spectral response functions and bands numbers due to the diversity of HSI cameras. Consequently, the existing machine-learning-based approaches fail to learn to super-resolve HSIs for a wide variety of input-output band settings. We propose a single Meta-Learning-Based Super-Resolution (MLSR) model, which can take in HSI images at an arbitrary number of input bands' peak wavelengths and generate SR HSIs with an arbitrary number of output bands' peak wavelengths. We leverage NTIRE2020 and ICVL datasets to train and validate the performance of the MLSR model. The results show that the single proposed model can successfully generate super-resolved HSI bands at arbitrary input-output band settings. The results are better or at least comparable to baselines that are separately trained on a specific input-output band setting.
翻译:光谱带狭窄的超光谱图像(HSI)能够捕捉到丰富的光谱信息,但它在这个过程中牺牲了其空间分辨率。最近提出了许多基于机器学习的HSI超分辨率算法。然而,这些方法的一个根本局限性是,它们高度依赖图像和相机设置,只能学会用一个特定设置将输入HSI映像与另一个输出为HSI。然而,由于HSI摄像机的多样性,不同的照相机可以捕捉具有不同光谱反应功能和波段号码的图像。因此,基于机器学习的现有方法无法学习超解 HSI 用于多种输入-输出波段设置的超级解析 HSI 。我们建议采用一个单一的Met-Learning超分辨率(MLSR) 模型,该模型可以在任意数量的输入波段峰值与另一个特定设置的输出波段中拍摄HSI 。我们利用 NTIRE2020 和 ICVL 数据集来培训和验证 MLSR模型的性能。结果显示,在最小的频段设置上,一个经过详细培训的磁段上,一个可进行比较的超级级基准设置。