DMSORT: An efficient parallel maritime multi-object tracking architecture for unmanned vessel platforms
Shengyu Tang, Zeyuan Lu, Jiazhi Dong, Changdong Yu, Xiaoyu Wang, Yaohui Lyu, Weihao Xia

TL;DR
DMSORT is a novel parallel multi-object tracking system for unmanned vessels that combines motion compensation, robust detection, and appearance features to improve maritime environment perception.
Contribution
The paper introduces DMSORT, a new parallel tracking architecture with affine motion compensation and a lightweight Transformer-based appearance extractor for maritime MOT.
Findings
Achieves state-of-the-art accuracy on Singapore Maritime Dataset.
Runs faster than existing ReID-based MOT frameworks.
Maintains high identity consistency under challenging conditions.
Abstract
Accurate perception of the marine environment through robust multi-object tracking (MOT) is essential for ensuring safe vessel navigation and effective maritime surveillance. However, the complicated maritime environment often causes camera motion and subsequent visual degradation, posing significant challenges to MOT. To address this challenge, we propose an efficient Dual-branch Maritime SORT (DMSORT) method for maritime MOT. The core of the framework is a parallel tracker with affine compensation, which incorporates an object detection and re-identification (ReID) branch, along with a dedicated branch for dynamic camera motion estimation. Specifically, a Reversible Columnar Detection Network (RCDN) is integrated into the detection module to leverage multi-level visual features for robust object detection. Furthermore, a lightweight Transformer-based appearance extractor (Li-TAE) is…
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Taxonomy
TopicsMaritime Navigation and Safety · Advanced Neural Network Applications · Infrared Target Detection Methodologies
