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Notice of retraction
Vol. 34, No. 8(3), S&M3042

Notice of retraction
Vol. 32, No. 8(2), S&M2292

Print: ISSN 0914-4935
Online: ISSN 2435-0869
Sensors and Materials
is an international peer-reviewed open access journal to provide a forum for researchers working in multidisciplinary fields of sensing technology.
Sensors and Materials
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Sensors and Materials, Volume 35, Number 9(3) (2023)
Copyright(C) MYU K.K.
pp. 3393-3404
S&M3399 Research Paper of Special Issue
https://doi.org/10.18494/SAM4437
Published: September 29, 2023

Enhancing Vessel Trajectory Prediction via Novel Loss Function in Deep Learning Model [PDF]

Seung Bae Jeon, Myeong-Hun Jeong, Tae-young Lee, and Dooyong Cho

(Received April 24, 2023; Accepted August 18, 2023)

Keywords: loss function, deep learning, vessel trajectory prediction, automatic identification system data

Recent developments in data collection technology and sensor precision have led to the generation of large amounts of high-quality data. The vast vessel trajectory data obtained from precise automatic identification system data facilitate the development of marine-related research fields. In particular, vessel trajectory prediction, such as preventing risks in advance or providing efficient routes by predicting the vessel location, is one of the essential parts of advanced vessel traffic service. In this study, the vessel trajectory was accurately and robustly predicted using a novel loss function. In previous studies, the loss function was designed to minimize the distance between the destination and predicted location of vessels, whereas the proposed loss function was designed to minimize the area of the triangle formed by the origin, destination, and predicted location. In experiments, the proposed approach outperformed the state-of-the-art method, reducing the mean absolute error by 12%.

Corresponding author: Myeong-Hun Jeong and Dooyong Cho


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Cite this article
Seung Bae Jeon, Myeong-Hun Jeong, Tae-young Lee, and Dooyong Cho, Enhancing Vessel Trajectory Prediction via Novel Loss Function in Deep Learning Model, Sens. Mater., Vol. 35, No. 9, 2023, p. 3393-3404.



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