Owen Cornec, Rahul Nair, et al.
NeurIPS 2021
We present a super-resolution model for an advection-diffusion process with limited information. While most of the super-resolution models assume high-resolution (HR) ground-truth data in the training, in many cases such HR dataset is not readily accessible. Here, we show that a Recurrent Convolutional Network trained with physics-based regularizations is able to reconstruct the HR information without having the HR ground-truth data. Moreover, considering the ill-posed nature of a super-resolution problem, we employ the Recurrent Wasserstein Autoencoder to model the uncertainty.
Owen Cornec, Rahul Nair, et al.
NeurIPS 2021
L.K. Wang, A. Acovic, et al.
MRS Spring Meeting 1993
Nishad Gothoskar, Marco Cusumano-Towner, et al.
NeurIPS 2021
Akifumi Wachi, Yunyue Wei, et al.
NeurIPS 2021