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Image Dataset for Neural Network Performance Estimation with Application to Maritime Ports (CROSBI ID 322753)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Petković, Miro ; Vujović, Igor ; Lušić, Zvonimir ; Šoda, Joško Image Dataset for Neural Network Performance Estimation with Application to Maritime Ports // Journal of marine science and engineering, 11 (2023), 3; 578, 14. doi: 10.3390/jmse11030578

Podaci o odgovornosti

Petković, Miro ; Vujović, Igor ; Lušić, Zvonimir ; Šoda, Joško

engleski

Image Dataset for Neural Network Performance Estimation with Application to Maritime Ports

Automated surveillance systems based on machine learning and computer vision constantly evolve to improve shipping and assist port authorities. The data obtained can be used for port and port property surveillance, traffic density analysis, maritime safety, pollution assessment, etc. However, due to the lack of datasets for video surveillance and ship classification in real maritime zones, there is a need for a reference dataset to compare the obtained results. This paper presents a new dataset for estimating detection and classification performance which provides versatile ship annotations and classifications for passenger ports with a large number of small- to medium-sized ships that were not monitored by the automatic identification system (AIS) and/or the vessel traffic system (VTS). The dataset is considered general for the Mediterranean region since many ports have a similar maritime traffic configuration as the Port of Split, Croatia. The dataset consists of 19, 337 high-resolution images with 27, 849 manually labeled ship instances classified into 12 categories. The vast majority of the images contain the port and starboard sides of the ships. In addition, the images were acquired in a real maritime zone at different times of the year, day, weather conditions, and sea state conditions.

visual image dataset ; ship classification ; computer vision ; machine learning ; maritime zone

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Podaci o izdanju

11 (3)

2023.

578

14

objavljeno

2077-1312

10.3390/jmse11030578

Trošak objave rada u otvorenom pristupu

Povezanost rada

Elektrotehnika, Računarstvo, Tehnologija prometa i transport

Poveznice
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