Hyperspectral image (HSI) super-resolution without additional auxiliary image remains a constant challenge due to its high-dimensional spectral patterns, where learning an effective spatial and spectral representation is a fundamental issue. Recently, Implicit Neural Representations (INRs) are making strides as a novel and effective representation, especially in the reconstruction task. Therefore, in this work, we propose a novel HSI reconstruction model based on INR which represents HSI by a continuous function mapping a spatial coordinate to its corresponding spectral radiance values. In particular, as a specific implementation of INR, the parameters of parametric model are predicted by a hypernetwork that operates on feature extraction using convolution network. It makes the continuous functions map the spatial coordinates to pixel values in a content-aware manner. Moreover, periodic spatial encoding are deeply integrated with the reconstruction procedure, which makes our model capable of recovering more high frequency details. To verify the efficacy of our model, we conduct experiments on three HSI datasets (CAVE, NUS, and NTIRE2018). Experimental results show that the proposed model can achieve competitive reconstruction performance in comparison with the state-of-the-art methods. In addition, we provide an ablation study on the effect of individual components of our model. We hope this paper could server as a potent reference for future research.
翻译:超光谱图像(HSI)超分辨率而没有附加辅助图像的超光谱(HSI)超级分辨率,由于高维光谱模式,继续是一个持续的挑战,因为高维光谱模式,学习有效的空间和光谱代表是一个根本问题。最近,隐性神经代表系统(INRs)作为一个新颖和有效的代表系统正在取得进步,特别是在重建任务中。因此,在这项工作中,我们提议基于IRR的新的HSI重建模型,它通过连续功能绘制与其相应的光谱光谱值的空间坐标来代表HSI。特别是,作为IRR的具体实施,一个利用革命网络进行特征提取运行的超网络预测了参数模型的参数。它使连续的功能以内容觉察方式绘制空间坐标以像素值绘制。此外,定期的空间编码与重建程序紧密结合,使得我们的模型能够恢复更高的频率细节。为了验证我们的模型的功效,我们在三个HSI数据集(CAVE、NUS和NTIRE2018)上进行了实验性结果,实验结果表明,拟议的模型可以实现竞争性的重建表现,与SDA-BServiews-Serview 的方法相比,我们可以提供一个具有强烈的样本效果的研究。