摘要: 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.