학술논문

Depth tracking of occluded ships based on SIFT feature matching
Document Type
Article
Source
KSII Transactions on Internet and Information Systems (TIIS). Apr 30, 2023 17(4):1066
Subject
Multi-target tracking
DeepSORT
SIFT
Feature Points
Deep Learning
Language
English
ISSN
1976-7277
Abstract
Multi-target tracking based on the detector is a very hot and important research topic in target tracking. It mainly includes two closely related processes, namely target detection and target tracking. Where target detection is responsible for detecting the exact position of the target, while target tracking monitors the temporal and spatial changes of the target. With the improvement of the detector, the tracking performance has reached a new level. The problem that always exists in the research of target tracking is the problem that occurs again after the target is occluded during tracking. Based on this question, this paper proposes a DeepSORT model based on SIFT features to improve ship tracking. Unlike previous feature extraction networks, SIFT algorithm does not require the characteristics of pre-training learning objectives and can be used in ship tracking quickly. At the same time, we improve and test the matching method of our model to find a balance between tracking accuracy and tracking speed. Experiments show that the model can get more ideal results.