Presentation 2020-03-09
Improvement of generalization performance in fish species discrimination and catch prediction using echo sounder images
Yuto Mori, Keiji Suzuki, Masaaki Wada,
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Abstract(in Japanese) (See Japanese page)
Abstract(in English) A Set-Net fishery has various problems. One of the problems is that it is difficult to cope with fishing restrictions for specific fish species. This is because we do not know the type of fish and the amount of catch until the net is lifted from the sea. In the current fishery, the images of the fish are grasped by the fish finder. A system to estimate the fish species and catch is not established. It has become clear that previous studies cannot perform learning to improve generalization performance. In this study, the problems were clarified in the learning of fish species discrimination up to now by the experiment using a training data division method and artificial echo images. In addition, the possibility of catch prediction is examined by performing multi-class classification using the created clusters.
Keyword(in Japanese) (See Japanese page)
Keyword(in English) Fish finder / Set net fishery / Clustering / Deep learning / Fish species discrimination / Fish catch prediction
Paper # AI2019-63
Date of Issue 2020-03-01 (AI)

Conference Information
Committee AI / IPSJ-ICS / JSAI-SAI / JSAI-DOCMAS / JSAI-KBS
Conference Date 2020/3/8(2days)
Place (in Japanese) (See Japanese page)
Place (in English)
Topics (in Japanese) (See Japanese page)
Topics (in English) Workshop of Social System and Information Technology (WSSIT20)
Chair Naoki Fukuta(Shizuoka Univ.)
Vice Chair Yuichi Sei(Univ. of Electro-Comm.) / Yuko Sakurai(AIST)
Secretary Yuichi Sei(Osaka Univ.) / Yuko Sakurai(Tokyo Univ. of Agriculture and Technology)
Assistant

Paper Information
Registration To Technical Committee on Artificial Intelligence and Knowledge-Based Processing / Special Interest Group on Intelligence and Complex Systems / Special Interest Group on Society and Artificial Intelligence / Special Interest Group on Data Oriented Constructive Mining and Simulation / Special Interest Group on Knowledge-Based Systems
Language JPN
Title (in Japanese) (See Japanese page)
Sub Title (in Japanese) (See Japanese page)
Title (in English) Improvement of generalization performance in fish species discrimination and catch prediction using echo sounder images
Sub Title (in English)
Keyword(1) Fish finder
Keyword(2) Set net fishery
Keyword(3) Clustering
Keyword(4) Deep learning
Keyword(5) Fish species discrimination
Keyword(6) Fish catch prediction
1st Author's Name Yuto Mori
1st Author's Affiliation Future University Hakodate(FUN)
2nd Author's Name Keiji Suzuki
2nd Author's Affiliation Future University Hakodate(FUN)
3rd Author's Name Masaaki Wada
3rd Author's Affiliation Future University Hakodate(FUN)
Date 2020-03-09
Paper # AI2019-63
Volume (vol) vol.119
Number (no) AI-469
Page pp.pp.55-60(AI),
#Pages 6
Date of Issue 2020-03-01 (AI)