Katarzyna, Bobkowska; Izabela, Bodus-Olkowska
(Scientific Journals Maritime University of Szczecin, Zeszyty Naukowe Akademia Morska w Szczecinie,
)
Artificial neural networks (ANN) are the most commonly used algorithms for image classification problems.
An image classifier takes an image or video as input and classifies it into one of the possible categories that
it was trained to identify. They are applied in various areas such as security, defense, healthcare, biology, forensics, communication, etc. There is no need to create one’s own ANN because there are several pre-trained
networks already available. The aim of the SHREC projects (automatic ship recognition and identification) is to
classify and identify the vessels based on images obtained from closed-circuit television (CCTV) cameras. For
this purpose, a dataset of vessel images was collected during 2018, 2019, and 2020 video measurement campaigns. The authors of this article used three pre-trained neural networks, GoogLeNet, AlexNet, and SqeezeNet,
to examine the classification possibility and assess its quality. About 8000 vessel images were used, which were
categorized into seven categories: barge, special-purpose service ships, motor yachts with a motorboat, passenger ships, sailing yachts, kayaks, and others. A comparison of the results using neural networks to classify
floating inland units is presented.