A Multiple Object Tracker with Spatiotemporal Memory Network

Author:

Xiao Peng1ORCID,Chi Jiannan23ORCID,Wang Zhiliang1,Yan Fei1,Liu Jiahui2

Affiliation:

1. School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing 100083, China

2. School of Automation and Electronic Engineering, University of Science and Technology Beijing, Beijing 100083, China

3. Engineering Research Center of Intelligence Perception and Autonomous Control, Beijing University of Technology, 100124, China

Abstract

Target tracking is an important application of unmanned aerial vehicles (UAVs). The template is the identity of the target and has a great impact on the performance of target tracking. Most methods only keep the latest template of the target, which is intuitive and convenient but has poor ability to resist the change of target appearance, especially to reidentify a target that has disappeared for a long time. In this paper, we propose a practical multiobject tracking (MOT) method, which uses historical information of targets for better adapting to appearance variations during tracking. To preserve the spatial-temporal information of the target, we introduce a memory pool to store masked feature maps at different moments, and precise masks are generated by a segmentation network. Meanwhile, we fuse the feature maps at different moments by calculating the pixel-level similarity between the current feature map and the masked historical feature maps. Benefiting from the powerful segmentation features and the utilization of historical information, our method can generate more accurate bounding boxes of the targets. Extensive experiments and comparisons with many trackers on MOTS, MOT17, and MOT20 demonstrate that our method is competitive. The ablation study showed that the introduction of memory improves the multiobject tracking accuracy (MOTA) by 2.1.

Funder

Basic and Applied Basic Research Foundation of Guangdong Province

Publisher

Hindawi Limited

Subject

Aerospace Engineering

Reference66 articles.

1. STMTrack: Template-free visual tracking with space-time memory networks;Z. Fu

2. Learning spatio-appearance memory network for high-performance visual tracking;F. Xie

3. Multi-Object Tracking and Segmentation with a Space-Time Memory Network;M. Miah,2021

4. Learning dynamic memory networks for object tracking;T. Yang

5. Memory network for tracking with deep regression

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