Aidong Lu, Christopher J. Morris, et al.
IEEE TVCG
High-resolution flood modeling is enabled by utilizing high-resolution input derived by remote sensing technologies such as Light Detection and Ranging (LiDAR) systems. However, there is a long-standing trade-off between the computational time and spatial resolution for a flood simulation. In this paper, we propose a novel deep learning-based geospatial encoder-decoder for flood modeling consisting of (i) accuracy-preserving coarse-graining of the input, (ii) simulating flood on the coarser input, and (iii) downscaling the simulated flood to super-resolution. Our experiments show that our approach accelerates flood modeling up to 50 times faster with 1/16 scale while MSE of 0.0179, which is 10.3% less than the baseline with bilinear interpolation. Especially, we observe 20.5% reduction of MSE on average for the 5% worst cases.
Aidong Lu, Christopher J. Morris, et al.
IEEE TVCG
Girmaw Abebe Tadesse, Oliver Bent, et al.
IEEE SPM
Xiaohui Shen, Gang Hua, et al.
FG 2011
Silvio Savarese, Holly Rushmeier, et al.
Proceedings of the IEEE International Conference on Computer Vision