Nakamura Makoto
Texture Analysis for Training of a Neural Network in Identification of Ocean Surface Wave Conditions at Night
Journal of National Fisheries University Volume 61 Issue 4
Page 174-180
published_at 2013-03
Title
テクスチャ解析による夜間海面波浪状態のニューラルネットワーク学習
Texture Analysis for Training of a Neural Network in Identification of Ocean Surface Wave Conditions at Night
Source Identifiers
[PISSN] 0370-9361
Creator Keywords
measurement
sea surface
texture
neural networks
winds
A system for automatic monitoring of wave conditions in littoral waters was constructed. Based on previously reported findings using daytime ocean surface images, the ability of the system to use nighttime images was investigated. Texture analysis of ocean surface images was performed on infrared images, and the characteristic quantities of these results were compared with wind force. Two analytical methods were used to extract the image characteristics of the quantitative result: the spatial gray-level dependence method and the gray-level difference method. A multilayer neural network was trained to predict ocean wind velocity by error back-propagation. The specified conditions and optimal ocean surface images were then compared to the network structure and learning conditions to evaluate the effectiveness of this system and to assess its limitations.
Languages
eng
Resource Type
departmental bulletin paper
Publishers
National Fisheries University
Date Issued
2013-03
File Version
Version of Record
Access Rights
open access
Relations
[ISSN]0370-9361