A4 Refereed article in a conference publication

Transfer Learning for Maritime Vessel Detection using Deep Neural Networks




AuthorsFarahnakian Fahimeh, Zelioli Luca, Heikkonen Jukka

EditorsN/A

Conference nameIEEE International Intelligent Transportation Systems Conference

Publication year2021

JournalProceedings of the IEEE international conference on intelligent transportation systems

Book title 2021 IEEE International Intelligent Transportation Systems Conference (ITSC)

Series titleProceedings of the IEEE international conference on intelligent transportation systems

First page 1

Last page6

ISBN978-1-7281-9143-0

eISBN978-1-7281-9142-3

ISSN2153-0009

DOIhttps://doi.org/10.1109/ITSC48978.2021.9565077


Abstract

Reliable vessel detection can improve safety and security in maritime environment. Recently, application of Deep Learning (DL)-based detectors have become popular in autonomous vehicles. The aim of this paper is to study how much a pretrained DL model on a domain-specific marine data can improve the performance of the detectors for vessel detection? To this end, we trained state-of-the-art DL-based detectors (Faster R-CNN [1], R-FCN [2] and SSD [3]) using an open source generic object detection COCO dataset [4] and a marine SeaShips dataset [5]. The performance of these detectors are explored based on different feature extractors. Moreover, we investigate the effect of object size on the detection accuracy. To obtain results, we collected a real marine dataset by a sensor system onboard a vessel in the Finnish archipelago. This system is used for developing autonomous vessels, and records data in a range of operation and climatic conditions. The experimental results show that Faster R-CNN with ResNet101 achieves the highest object detection accuracy with mean average precision of 75.2%.



Last updated on 2024-26-11 at 14:46