Analysis Based on Recent Deep Learning Approaches Applied in Real-Time Multi-Object Tracking: A Review
The deep learning technique has proven to be effective in the classification and localization of objects on the image or ground plane over time. The strength of the technique's features has enabled researchers to analyze object trajectories across multiple cameras for online multi-object tracki...
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doaj-2e77f04147a14523964406525764e85a2021-03-30T15:10:16ZengIEEEIEEE Access2169-35362021-01-019326503267110.1109/ACCESS.2021.30608219359743Analysis Based on Recent Deep Learning Approaches Applied in Real-Time Multi-Object Tracking: A ReviewLesole Kalake0https://orcid.org/0000-0002-3261-706XWanggen Wan1https://orcid.org/0000-0002-5065-9650Li Hou2School of Communications and Information Engineering, Institute of Smart City, Shanghai University, Shanghai, ChinaSchool of Communications and Information Engineering, Institute of Smart City, Shanghai University, Shanghai, ChinaSchool of Information Engineering, Huangshan University, Huangshan, ChinaThe deep learning technique has proven to be effective in the classification and localization of objects on the image or ground plane over time. The strength of the technique's features has enabled researchers to analyze object trajectories across multiple cameras for online multi-object tracking (MOT) systems. In the past five years, these technical features have gained a reputation in handling several real-time multiple object tracking challenges. This contributed to the increasing number of proposed deep learning methods (DLMs) and networks seen by the computer vision community. The technique efficiently handled various challenges in real-time MOT systems and improved overall tracking performance. However, it experienced difficulties in the detection and tracking of objects in overcrowded scenes and motion variations and confused appearance variations. Therefore, in this paper, we summarize and analyze the 95 contributions made in the past five years on deep learning-based online MOT methods and networks that rank highest in the public benchmark. We review their expedition, performance, advantages, and challenges under different experimental setups and tracking conditions. We also further categorize these methods and networks into four main themes: Online MOT Based Detection Quality and Associations, Real-Time MOT with High-Speed Tracking and Low Computational Costs, Modeling Target Uncertainty in Online MOT, and Deep Convolutional Neural Network (DCNN), Affinity and Data Association. Finally, we discuss the ongoing challenges and directions for future research.https://ieeexplore.ieee.org/document/9359743/Deep learningdetection qualityhigh-speed trackingmulti-camera object trackingreal-time tracking |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lesole Kalake Wanggen Wan Li Hou |
spellingShingle |
Lesole Kalake Wanggen Wan Li Hou Analysis Based on Recent Deep Learning Approaches Applied in Real-Time Multi-Object Tracking: A Review IEEE Access Deep learning detection quality high-speed tracking multi-camera object tracking real-time tracking |
author_facet |
Lesole Kalake Wanggen Wan Li Hou |
author_sort |
Lesole Kalake |
title |
Analysis Based on Recent Deep Learning Approaches Applied in Real-Time Multi-Object Tracking: A Review |
title_short |
Analysis Based on Recent Deep Learning Approaches Applied in Real-Time Multi-Object Tracking: A Review |
title_full |
Analysis Based on Recent Deep Learning Approaches Applied in Real-Time Multi-Object Tracking: A Review |
title_fullStr |
Analysis Based on Recent Deep Learning Approaches Applied in Real-Time Multi-Object Tracking: A Review |
title_full_unstemmed |
Analysis Based on Recent Deep Learning Approaches Applied in Real-Time Multi-Object Tracking: A Review |
title_sort |
analysis based on recent deep learning approaches applied in real-time multi-object tracking: a review |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2021-01-01 |
description |
The deep learning technique has proven to be effective in the classification and localization of objects on the image or ground plane over time. The strength of the technique's features has enabled researchers to analyze object trajectories across multiple cameras for online multi-object tracking (MOT) systems. In the past five years, these technical features have gained a reputation in handling several real-time multiple object tracking challenges. This contributed to the increasing number of proposed deep learning methods (DLMs) and networks seen by the computer vision community. The technique efficiently handled various challenges in real-time MOT systems and improved overall tracking performance. However, it experienced difficulties in the detection and tracking of objects in overcrowded scenes and motion variations and confused appearance variations. Therefore, in this paper, we summarize and analyze the 95 contributions made in the past five years on deep learning-based online MOT methods and networks that rank highest in the public benchmark. We review their expedition, performance, advantages, and challenges under different experimental setups and tracking conditions. We also further categorize these methods and networks into four main themes: Online MOT Based Detection Quality and Associations, Real-Time MOT with High-Speed Tracking and Low Computational Costs, Modeling Target Uncertainty in Online MOT, and Deep Convolutional Neural Network (DCNN), Affinity and Data Association. Finally, we discuss the ongoing challenges and directions for future research. |
topic |
Deep learning detection quality high-speed tracking multi-camera object tracking real-time tracking |
url |
https://ieeexplore.ieee.org/document/9359743/ |
work_keys_str_mv |
AT lesolekalake analysisbasedonrecentdeeplearningapproachesappliedinrealtimemultiobjecttrackingareview AT wanggenwan analysisbasedonrecentdeeplearningapproachesappliedinrealtimemultiobjecttrackingareview AT lihou analysisbasedonrecentdeeplearningapproachesappliedinrealtimemultiobjecttrackingareview |
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1724179845562236928 |