Optimal Metric Evaluation-Based Multicue Inverse Sparse Appearance Model for Object Tracking

In order to obtain the discriminative compact appearance model for tracking objects effectively, this paper proposes a new structural tracking strategy that includes multicue inverse sparse appearance model and optimal metric evaluation between online robust templates and a limited number of particl...

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Main Authors: Xiaowei An, Qi Zhao, Nongliang Sun, Quanquan Liang
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2020/1248064
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spelling doaj-204fba81ddfc408396797320e67471c22020-12-28T01:30:57ZengHindawi LimitedMathematical Problems in Engineering1563-51472020-01-01202010.1155/2020/1248064Optimal Metric Evaluation-Based Multicue Inverse Sparse Appearance Model for Object TrackingXiaowei An0Qi Zhao1Nongliang Sun2Quanquan Liang3College of Electrical Engineering and AutomationSchool of Aviation EngineeringCollege of Electronics and Information EngineeringCollege of Electronics and Information EngineeringIn order to obtain the discriminative compact appearance model for tracking objects effectively, this paper proposes a new structural tracking strategy that includes multicue inverse sparse appearance model and optimal metric evaluation between online robust templates and a limited number of particle samples in the looping process. Multicue inverse sparse appearance model globally improves the efficient selection of informative particle samples that can avoid the cumbersome coding and decoding cost for the trivial random particle samples. Only the most potential crucial cases are involved in each tracking loop. This refrains from unreasonable, rough numerical reduction of particle samples and also keeps the unbiasedness and dynamic stochasticness of the sampling process. Meanwhile, low-rank self-representatives for positive and negative samples facilitate the formulation of a suitable code book that arranges the useful sparse coefficients for feature bags and facilitates optimal metric evaluation for online training. It also alleviates the accuracy degradation of tracking occluded objects and improves the robustness of the tracker. Both of them preserve the discriminative compactness of target which speeds up particle filtering localization to separate the target object from distractors. Moreover, the proposed method exploits online appearance representations to learn the sharing compact information that avoids massive calculation burdens for massive visual data.http://dx.doi.org/10.1155/2020/1248064
collection DOAJ
language English
format Article
sources DOAJ
author Xiaowei An
Qi Zhao
Nongliang Sun
Quanquan Liang
spellingShingle Xiaowei An
Qi Zhao
Nongliang Sun
Quanquan Liang
Optimal Metric Evaluation-Based Multicue Inverse Sparse Appearance Model for Object Tracking
Mathematical Problems in Engineering
author_facet Xiaowei An
Qi Zhao
Nongliang Sun
Quanquan Liang
author_sort Xiaowei An
title Optimal Metric Evaluation-Based Multicue Inverse Sparse Appearance Model for Object Tracking
title_short Optimal Metric Evaluation-Based Multicue Inverse Sparse Appearance Model for Object Tracking
title_full Optimal Metric Evaluation-Based Multicue Inverse Sparse Appearance Model for Object Tracking
title_fullStr Optimal Metric Evaluation-Based Multicue Inverse Sparse Appearance Model for Object Tracking
title_full_unstemmed Optimal Metric Evaluation-Based Multicue Inverse Sparse Appearance Model for Object Tracking
title_sort optimal metric evaluation-based multicue inverse sparse appearance model for object tracking
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2020-01-01
description In order to obtain the discriminative compact appearance model for tracking objects effectively, this paper proposes a new structural tracking strategy that includes multicue inverse sparse appearance model and optimal metric evaluation between online robust templates and a limited number of particle samples in the looping process. Multicue inverse sparse appearance model globally improves the efficient selection of informative particle samples that can avoid the cumbersome coding and decoding cost for the trivial random particle samples. Only the most potential crucial cases are involved in each tracking loop. This refrains from unreasonable, rough numerical reduction of particle samples and also keeps the unbiasedness and dynamic stochasticness of the sampling process. Meanwhile, low-rank self-representatives for positive and negative samples facilitate the formulation of a suitable code book that arranges the useful sparse coefficients for feature bags and facilitates optimal metric evaluation for online training. It also alleviates the accuracy degradation of tracking occluded objects and improves the robustness of the tracker. Both of them preserve the discriminative compactness of target which speeds up particle filtering localization to separate the target object from distractors. Moreover, the proposed method exploits online appearance representations to learn the sharing compact information that avoids massive calculation burdens for massive visual data.
url http://dx.doi.org/10.1155/2020/1248064
work_keys_str_mv AT xiaoweian optimalmetricevaluationbasedmulticueinversesparseappearancemodelforobjecttracking
AT qizhao optimalmetricevaluationbasedmulticueinversesparseappearancemodelforobjecttracking
AT nongliangsun optimalmetricevaluationbasedmulticueinversesparseappearancemodelforobjecttracking
AT quanquanliang optimalmetricevaluationbasedmulticueinversesparseappearancemodelforobjecttracking
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