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Identification of Fish Species using Neural Networks

Journal of National Fisheries University Volume 58 Issue 1 Page 65-71
published_at 2009-11
58-1-65-71.pdf
[fulltext] 1.24 MB
Title
Identification of Fish Species using Neural Networks
Creators Morimoto Eiji
Creators Taira Yuichiro
Creators Nakamura Makoto
Source Identifiers
Creator Keywords
Fishery engineering Species identification Neural network Truss protocol
The number of workers engaged in Japanese fisheries and related industries in Japan has decreased markedly in recent years due to factors such as an aging workforce, issues related to the management of natural resources and the environment, international affairs, and changes in consumer food preferences. There is therefore a need to mechanize and automate aspects related to work usually performed by humans in the fishery industry. In this research, a system for identifying fish species has been developed. The system employs neural networks which learn to differentiate between different fish species using reference points. Reference points are characteristic points that are extracted from images truss lengths between reference points relative to total body length are used to compile the dataset used for network inputs. For fish with bodies that have been contorted, only data from the vicinity of the fish head are used for network learning. Given that body color is an important characteristic for species identification, an effective method for capturing color data was investigated and the effectiveness of the proposed method and optimal number of color parameters was determined.
Languages eng
Resource Type departmental bulletin paper
Publishers National Fisheries University
Date Issued 2009-11
File Version Version of Record
Access Rights open access
Relations
[ISSN]0370-9361