Point-to-set distance metric learning on deep representations for visual tracking

For autonomous driving application, a car shall be able to track objects in the scene in order to estimate where and how they will move such that the tracker embedded in the car can efficiently alert the car for effective collision-avoidance. Traditional discriminative object tracking methods usuall...

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Published in:IEEE Transactions on Intelligent Transportation Systems
Main Authors: Zhang, Shengping, Qi, Yuankai, Jiang, Feng, Lan, Xiangyuan, Yuen, Pong C., Zhou, Huiyu
Format: Article in Journal/Newspaper
Language:English
Published: 2018
Subjects:
DML
Online Access:https://pure.qub.ac.uk/en/publications/f2dfdeab-829f-46b7-9011-848a88ac1b4c
https://doi.org/10.1109/TITS.2017.2766093
id ftqueensubelpubl:oai:pure.qub.ac.uk/portal:publications/f2dfdeab-829f-46b7-9011-848a88ac1b4c
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spelling ftqueensubelpubl:oai:pure.qub.ac.uk/portal:publications/f2dfdeab-829f-46b7-9011-848a88ac1b4c 2023-10-01T03:55:39+02:00 Point-to-set distance metric learning on deep representations for visual tracking Zhang, Shengping Qi, Yuankai Jiang, Feng Lan, Xiangyuan Yuen, Pong C. Zhou, Huiyu 2018-01 https://pure.qub.ac.uk/en/publications/f2dfdeab-829f-46b7-9011-848a88ac1b4c https://doi.org/10.1109/TITS.2017.2766093 eng eng info:eu-repo/semantics/closedAccess Zhang , S , Qi , Y , Jiang , F , Lan , X , Yuen , P C & Zhou , H 2018 , ' Point-to-set distance metric learning on deep representations for visual tracking ' , IEEE Transactions on Intelligent Transportation Systems , vol. 19 , no. 1 , pp. 187 - 198 . https://doi.org/10.1109/TITS.2017.2766093 article 2018 ftqueensubelpubl https://doi.org/10.1109/TITS.2017.2766093 2023-09-07T22:20:31Z For autonomous driving application, a car shall be able to track objects in the scene in order to estimate where and how they will move such that the tracker embedded in the car can efficiently alert the car for effective collision-avoidance. Traditional discriminative object tracking methods usually train a binary classifier via a support vector machine (SVM) scheme to distinguish the target from its background. Despite demonstrated success, the performance of the SVM-based trackers is limited because the classification is carried out only depending on support vectors (SVs) but the target's dynamic appearance may look similar to the training samples that have not been selected as SVs, especially when the training samples are not linearly classifiable. In such cases, the tracker may drift to the background and fail to track the target eventually. To address this problem, in this paper, we propose to integrate the point-to-set/image-to-imageSet distance metric learning (DML) into visual tracking tasks and take full advantage of all the training samples when determining the best target candidate. The point-to-set DML is conducted on convolutional neural network features of the training data extracted from the starting frames. When a new frame comes, target candidates are first projected to the common subspace using the learned mapping functions, and then the candidate having the minimal distance to the target template sets is selected as the tracking result. Extensive experimental results show that even without model update the proposed method is able to achieve favorable performance on challenging image sequences compared with several state-of-the-art trackers. Article in Journal/Newspaper DML Queen's University Belfast Research Portal IEEE Transactions on Intelligent Transportation Systems 19 1 187 198
institution Open Polar
collection Queen's University Belfast Research Portal
op_collection_id ftqueensubelpubl
language English
description For autonomous driving application, a car shall be able to track objects in the scene in order to estimate where and how they will move such that the tracker embedded in the car can efficiently alert the car for effective collision-avoidance. Traditional discriminative object tracking methods usually train a binary classifier via a support vector machine (SVM) scheme to distinguish the target from its background. Despite demonstrated success, the performance of the SVM-based trackers is limited because the classification is carried out only depending on support vectors (SVs) but the target's dynamic appearance may look similar to the training samples that have not been selected as SVs, especially when the training samples are not linearly classifiable. In such cases, the tracker may drift to the background and fail to track the target eventually. To address this problem, in this paper, we propose to integrate the point-to-set/image-to-imageSet distance metric learning (DML) into visual tracking tasks and take full advantage of all the training samples when determining the best target candidate. The point-to-set DML is conducted on convolutional neural network features of the training data extracted from the starting frames. When a new frame comes, target candidates are first projected to the common subspace using the learned mapping functions, and then the candidate having the minimal distance to the target template sets is selected as the tracking result. Extensive experimental results show that even without model update the proposed method is able to achieve favorable performance on challenging image sequences compared with several state-of-the-art trackers.
format Article in Journal/Newspaper
author Zhang, Shengping
Qi, Yuankai
Jiang, Feng
Lan, Xiangyuan
Yuen, Pong C.
Zhou, Huiyu
spellingShingle Zhang, Shengping
Qi, Yuankai
Jiang, Feng
Lan, Xiangyuan
Yuen, Pong C.
Zhou, Huiyu
Point-to-set distance metric learning on deep representations for visual tracking
author_facet Zhang, Shengping
Qi, Yuankai
Jiang, Feng
Lan, Xiangyuan
Yuen, Pong C.
Zhou, Huiyu
author_sort Zhang, Shengping
title Point-to-set distance metric learning on deep representations for visual tracking
title_short Point-to-set distance metric learning on deep representations for visual tracking
title_full Point-to-set distance metric learning on deep representations for visual tracking
title_fullStr Point-to-set distance metric learning on deep representations for visual tracking
title_full_unstemmed Point-to-set distance metric learning on deep representations for visual tracking
title_sort point-to-set distance metric learning on deep representations for visual tracking
publishDate 2018
url https://pure.qub.ac.uk/en/publications/f2dfdeab-829f-46b7-9011-848a88ac1b4c
https://doi.org/10.1109/TITS.2017.2766093
genre DML
genre_facet DML
op_source Zhang , S , Qi , Y , Jiang , F , Lan , X , Yuen , P C & Zhou , H 2018 , ' Point-to-set distance metric learning on deep representations for visual tracking ' , IEEE Transactions on Intelligent Transportation Systems , vol. 19 , no. 1 , pp. 187 - 198 . https://doi.org/10.1109/TITS.2017.2766093
op_rights info:eu-repo/semantics/closedAccess
op_doi https://doi.org/10.1109/TITS.2017.2766093
container_title IEEE Transactions on Intelligent Transportation Systems
container_volume 19
container_issue 1
container_start_page 187
op_container_end_page 198
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