Prediction of Longline Fishing Activity from V-Pass Data Using Hidden Markov Model
SCOPUS
KCI
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Title
- Prediction of Longline Fishing Activity from V-Pass Data Using Hidden Markov Model
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Alternative Title
- Prediction of Longline Fishing Activity from V-Pass Data Using Hidden Markov Model
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Author(s)
- Shin, Dae-Woon; Chan-Su Yang; Rashid ahmed, Harun Al
- KIOST Author(s)
- Yang, Chan Su(양찬수)
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Alternative Author(s)
- 양찬수; AHMED
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Publication Year
- 2022-02
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Abstract
- Marine fisheries resources face major anthropogenic threat from unregulated fishing activities; thus require precise detection for protection through marine surveillance. Korea developed an efficient land-based small fishing vessel monitoring system using real-time V-Pass data. However, those data directly do not provide information on fishing activities, thus further efforts are necessary to differentiate their activity status. In Korea, especially in Busan, longlining is practiced by many small fishing vessels to catch several types of fishes that need to be identified for proper monitoring. Therefore, in this study we have improved the existing fishing status classification method by applying Hidden Markov Model (HMM) on V-Pass data in order to further classify their fishing status into three groups, viz. non-fishing, longlining and other types of fishing. Data from 206 fishing vessels at Busan on 05 February, 2021 were used for this purpose. Two tiered HMM was applied that first differentiates non-fishing status from the fishing status, and finally classifies that fishing status into longlining and other types of fishing. Data from 193 and 13 ships were used as training and test datasets, respectively. Using this model 90.45% accuracy in classifying into fishing and non-fishing status and 88.23% overall accuracy in classifying all into three types of fishing statuses were achieved. Thus, this method is recommended for monitoring the activities of small fishing vessels equipped with V-Pass, especially for detecting longlining.
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ISSN
- 1225-6161
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URI
- https://sciwatch.kiost.ac.kr/handle/2020.kiost/42370
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DOI
- 10.7780/kjrs.2022.38.1.6
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Bibliographic Citation
- Korean Journal of Remote Sensing, v.38, no.1, pp.73 - 82, 2022
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Publisher
- 대한원격탐사학회
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Keywords
- Longlining; Fishing Activity; Hidden Markov Model; V-Pass
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Type
- Article
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Language
- English
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