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Morimoto Eiji


Neural Network Learning of Ocean Wave Condition by Texture Analysis

Journal of National Fisheries University Volume 60 Issue 4 Page 173-181
published_at 2012-03
60-4-173-181.pdf
[fulltext] 674 KB
Title
テクスチャ解析による海面波浪状態のニューラルネット学習
Neural Network Learning of Ocean Wave Condition by Texture Analysis
Creators Morimoto Eiji
Creators Nakamura Makoto
Source Identifiers [PISSN] 0370-9361
Creator Keywords
wave measurement texture neural networks wind force
In this study, littoral wave conditions were transformed into image data and used to assess the applicability of the method to constructing a system for automatically digitizing and monitoring wave conditions. An image of ocean wave conditions was treated as a texture and its characteristics were examined as texture feature quantities representing the surface conditions in response to wind. These feature quantities were input to a hierarchical neural network for learning. The network, which had a multilayer structure adapted for the back-propagation algorithm, facilitated the study of the influence of learning conditions on the network structure. In addition, digital sensitivity analysis was performed to identify optimal calculation conditions for presenting an optimal image of the sea surface. Analyses were also performed using spatial color concentration dependence, with texture feature quantities consisting of energy, entropy, correlation, local uniformity, and inertia.
Languages eng
Resource Type departmental bulletin paper
Publishers National Fisheries University
Date Issued 2012-03
File Version Version of Record
Access Rights open access
Relations
[ISSN]0370-9361