论文标题

耦合的卷积神经网络具有自适应响应功能学习,用于无监督的高光超分辨率

Coupled Convolutional Neural Network with Adaptive Response Function Learning for Unsupervised Hyperspectral Super-Resolution

论文作者

Zheng, Ke, Gao, Lianru, Liao, Wenzhi, Hong, Danfeng, Zhang, Bing, Cui, Ximin, Chanussot, Jocelyn

论文摘要

由于高光谱成像系统的局限性,高光谱成像(HSI)通常会遭受空间分辨率差,从而阻碍了许多成像的应用。高光谱超分辨率是指融合HSI和MSI生成具有高空间和高光谱分辨率的图像。最近,已经提出了几种新方法来解决此融合问题,并且大多数方法假设已知点扩散函数(PSF)和光谱响应函数(SRF)的先前信息是已知的。但是,实际上,此信息通常受到限制或不可用。在这项工作中,无监督的基于深度学习的融合方法-HyConet可以解决HSI -MSI融合中的问题,而无需先前的PSF和SRF信息。 HYCONET由三个耦合自动编码器网组成,其中HSI和MSI基于线性UMIXING模型将HSI和MSI未与End成员和丰度组成。设计了两个特殊的卷积层充当与三个自动编码器网坐标的桥梁,并且在训练过程中,在两个卷积层中适应PSF和SRF参数。此外,在关节损失函数的驱动下,提出的方法是直接的,并且以端到端的训练方式很容易实现。研究中执行的实验表明,该方法的性能很好,并为不同的数据集以及任意的PSF和SRF产生强大的结果。

Due to the limitations of hyperspectral imaging systems, hyperspectral imagery (HSI) often suffers from poor spatial resolution, thus hampering many applications of the imagery. Hyperspectral super-resolution refers to fusing HSI and MSI to generate an image with both high spatial and high spectral resolutions. Recently, several new methods have been proposed to solve this fusion problem, and most of these methods assume that the prior information of the Point Spread Function (PSF) and Spectral Response Function (SRF) are known. However, in practice, this information is often limited or unavailable. In this work, an unsupervised deep learning-based fusion method - HyCoNet - that can solve the problems in HSI-MSI fusion without the prior PSF and SRF information is proposed. HyCoNet consists of three coupled autoencoder nets in which the HSI and MSI are unmixed into endmembers and abundances based on the linear unmixing model. Two special convolutional layers are designed to act as a bridge that coordinates with the three autoencoder nets, and the PSF and SRF parameters are learned adaptively in the two convolution layers during the training process. Furthermore, driven by the joint loss function, the proposed method is straightforward and easily implemented in an end-to-end training manner. The experiments performed in the study demonstrate that the proposed method performs well and produces robust results for different datasets and arbitrary PSFs and SRFs.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源