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A comparative study of deep learning-based network model and conventional method to assess beach debris standing-stock

Authors
Song, KyounghwanJung, Jung-YeulLee, Seung HyunPark, Sanghyun
Issue Date
7월-2021
Publisher
PERGAMON-ELSEVIER SCIENCE LTD
Keywords
Beach debris; Deep learning; Detection and quantification; Fieldwork; Image processing; Marine debris
Citation
MARINE POLLUTION BULLETIN, v.168
Journal Title
MARINE POLLUTION BULLETIN
Volume
168
URI
https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/9547
DOI
10.1016/j.marpolbul.2021.112466
ISSN
0025-326X
1879-3363
Abstract
The conventional survey of marine debris standing-stock has various drawbacks such as high cost and inaccuracy because the total amount of debris in the whole beach is inferred using the results of the manual investigation in selected narrow areas. To overcome the disadvantages, an automatic detection method using a deep learningbased network model was developed to detect and quantify the beach debris. The network model developed in this study classified items with a precision of 0.87 (87%) mAP and showed <5% error compared to actual survey. This study is the first fieldwork in Korea that shows the difference between automatic and conventional methods to predict the beach debris standing-stock. The results provide essential information for the development of effective beach debris management systems and policies.
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해양공공디지털연구본부 > 해사안전·환경연구센터 > Journal Articles
해양공공디지털연구본부 > 해사디지털서비스연구센터 > Journal Articles

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Jung, Jung Yeul
해양공공디지털연구본부 (해사안전·환경연구센터)
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