We consider using the system's optical imaging process with convolutional neural networks (CNNs) to solve the snapshot hyperspectral imaging reconstruction problem, which uses a dual-camera system to capture the three-dimensional hyperspectral images (HSIs) in a compressed way. Various methods using CNNs have been developed in recent years to reconstruct HSIs, but most of the supervised deep learning methods aimed to fit a brute-force mapping relationship between the captured compressed image and standard HSIs. Thus, the learned mapping would be invalid when the observation data deviate from the training data. Especially, we usually don't have ground truth in real-life scenarios. In this paper, we present a self-supervised dual-camera equipment with an untrained physics-informed CNNs framework. Extensive simulation and experimental results show that our method without training can be adapted to a wide imaging environment with good performance. Furthermore, compared with the training-based methods, our system can be constantly fine-tuned and self-improved in real-life scenarios.
翻译:我们考虑使用该系统与进化神经网络的光学成像过程来解决超光谱成像重建问题,即使用双光谱系统以压缩的方式捕捉三维超光谱图像(HISs),近些年来开发了使用CNN的各种方法来重建HSIs,但大多数监督的深层学习方法旨在适应被捕获的压缩图像与标准HSI之间的粗体图绘制关系。因此,当观测数据偏离培训数据时,所学的绘图将是无效的。特别是,我们通常没有真实生活中的真相。在本论文中,我们展示了一种自我监督的双光摄影设备,配有未经训练的物理学知情CNNs框架。广泛的模拟和实验结果显示,没有培训,我们的方法可以适应一个表现良好的大成成像环境。此外,与基于培训的方法相比,我们的系统可以在现实生活中不断进行精细的调整和自我改进。