A Physics-Driven CNN Model for Real-Time Sea Waves 3D Reconstruction SCIE SCOPUS

Cited 3 time in WEB OF SCIENCE Cited 9 time in Scopus
Title
A Physics-Driven CNN Model for Real-Time Sea Waves 3D Reconstruction
Author(s)
Pistellato, Mara; Bergamasco, Filippo; Torsello, Andrea; Barbariol, Francesco; Yoo, Je Seon; Jeong, Jin Yong; Benetazzo, Alvise
KIOST Author(s)
Yoo, Jeseon(유제선)Jeong, Jin Yong(정진용)
Alternative Author(s)
유제선; 정진용
Publication Year
2021-09
Abstract
One of the most promising techniques for the analysis of Spatio-Temporal ocean wave fields is stereo vision. Indeed, the reconstruction accuracy and resolution typically outperform other approaches like radars, satellites, etc. However, it is computationally expensive so its application is typically restricted to the analysis of short pre-recorded sequences. What prevents such methodology from being truly real-time is the final 3D surface estimation from a scattered, non-equispaced point cloud. Recently, we studied a novel approach exploiting the temporal dependence of subsequent frames to iteratively update the wave spectrum over time. Albeit substantially faster, the unpredictable convergence time of the optimization involved still prevents its usage as a continuously running remote sensing infrastructure. In this work, we build upon the same idea, but investigating the feasibility of a fully data-driven Machine Learning (ML) approach. We designed a novel Convolutional Neural Network that learns how to produce an accurate surface from the scattered elevation data of three subsequent frames. The key idea is to embed the linear dispersion relation into the model itself to physically relate the sparse points observed at different times. Assuming that the scattered data are uniformly distributed in the spatial domain, this has the same effect of increasing the sample density of each single frame. Experiments demonstrate how the proposed technique, even if trained with purely synthetic data, can produce accurate and physically consistent surfaces at five frames per second on a modern PC.
ISSN
2072-4292
URI
https://sciwatch.kiost.ac.kr/handle/2020.kiost/41608
DOI
10.3390/rs13183780
Bibliographic Citation
REMOTE SENSING, v.13, no.18, 2021
Publisher
Multidisciplinary Digital Publishing Institute (MDPI)
Subject
WIND-WAVES; SURFACE-WAVES; RADAR IMAGES; STEREO
Keywords
sea-waves; wave fields; surface reconstruction; Convolutional Neural Networks; depth completion
Type
Article
Language
English
Document Type
Article
Files in This Item:
There are no files associated with this item.

qrcode

Items in ScienceWatch@KIOST are protected by copyright, with all rights reserved, unless otherwise indicated.

Browse