Robust tracking-by-detection using a selection and completion mechanism

Abstract It is challenging to track a target continuously in videos with long-term occlusion, or objects which leave then re-enter a scene. Existing tracking algorithms combined with onlinetrained object detectors perform unreliably in complex conditions, and can only provide discontinuous trajector...

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Main Authors: Ruochen Fan, Fang-Lue Zhang, Min Zhang, Ralph R. Martin
Format: Article
Language:English
Published: SpringerOpen 2017-05-01
Series:Computational Visual Media
Subjects:
Online Access:http://link.springer.com/article/10.1007/s41095-017-0083-7
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spelling doaj-23a2a1fcb16b4378945822c1531a58152020-11-25T00:46:08ZengSpringerOpenComputational Visual Media2096-04332096-06622017-05-013328529410.1007/s41095-017-0083-7Robust tracking-by-detection using a selection and completion mechanismRuochen Fan0Fang-Lue Zhang1Min Zhang2Ralph R. Martin3Tsinghua UniversitySchool of Engineering and Computer Science, Victoria University of WellingtonCenter of Mathematical Sciences and Applications, Harvard UniversitySchool of Computer Science and Informatics, Cardiff UniversityAbstract It is challenging to track a target continuously in videos with long-term occlusion, or objects which leave then re-enter a scene. Existing tracking algorithms combined with onlinetrained object detectors perform unreliably in complex conditions, and can only provide discontinuous trajectories with jumps in position when the object is occluded. This paper proposes a novel framework of tracking-by-detection using selection and completion to solve the abovementioned problems. It has two components, tracking and trajectory completion. An offline-trained object detector can localize objects in the same category as the object being tracked. The object detector is based on a highly accurate deep learning model. The object selector determines which object should be used to re-initialize a traditional tracker. As the object selector is trained online, it allows the framework to be adaptable. During completion, a predictive non-linear autoregressive neural network completes any discontinuous trajectory. The tracking component is an online real-time algorithm, and the completion part is an after-theevent mechanism. Quantitative experiments show a significant improvement in robustness over prior state-of- the-art methods.http://link.springer.com/article/10.1007/s41095-017-0083-7object trackingdetectionproposal selectiontrajectory completion
collection DOAJ
language English
format Article
sources DOAJ
author Ruochen Fan
Fang-Lue Zhang
Min Zhang
Ralph R. Martin
spellingShingle Ruochen Fan
Fang-Lue Zhang
Min Zhang
Ralph R. Martin
Robust tracking-by-detection using a selection and completion mechanism
Computational Visual Media
object tracking
detection
proposal selection
trajectory completion
author_facet Ruochen Fan
Fang-Lue Zhang
Min Zhang
Ralph R. Martin
author_sort Ruochen Fan
title Robust tracking-by-detection using a selection and completion mechanism
title_short Robust tracking-by-detection using a selection and completion mechanism
title_full Robust tracking-by-detection using a selection and completion mechanism
title_fullStr Robust tracking-by-detection using a selection and completion mechanism
title_full_unstemmed Robust tracking-by-detection using a selection and completion mechanism
title_sort robust tracking-by-detection using a selection and completion mechanism
publisher SpringerOpen
series Computational Visual Media
issn 2096-0433
2096-0662
publishDate 2017-05-01
description Abstract It is challenging to track a target continuously in videos with long-term occlusion, or objects which leave then re-enter a scene. Existing tracking algorithms combined with onlinetrained object detectors perform unreliably in complex conditions, and can only provide discontinuous trajectories with jumps in position when the object is occluded. This paper proposes a novel framework of tracking-by-detection using selection and completion to solve the abovementioned problems. It has two components, tracking and trajectory completion. An offline-trained object detector can localize objects in the same category as the object being tracked. The object detector is based on a highly accurate deep learning model. The object selector determines which object should be used to re-initialize a traditional tracker. As the object selector is trained online, it allows the framework to be adaptable. During completion, a predictive non-linear autoregressive neural network completes any discontinuous trajectory. The tracking component is an online real-time algorithm, and the completion part is an after-theevent mechanism. Quantitative experiments show a significant improvement in robustness over prior state-of- the-art methods.
topic object tracking
detection
proposal selection
trajectory completion
url http://link.springer.com/article/10.1007/s41095-017-0083-7
work_keys_str_mv AT ruochenfan robusttrackingbydetectionusingaselectionandcompletionmechanism
AT fangluezhang robusttrackingbydetectionusingaselectionandcompletionmechanism
AT minzhang robusttrackingbydetectionusingaselectionandcompletionmechanism
AT ralphrmartin robusttrackingbydetectionusingaselectionandcompletionmechanism
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