Object Tracking with an Evolutionary Particle Filter Based on Self-Adaptive Multi-Features Fusion

Particle filter algorithms are widely used for object tracking in video sequences, but the standard particle filter algorithm cannot solve the validity of particles ideally. To solve the problems of particle degeneration and sample impoverishment in a particle filter tracking algorithm, an improved...

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Main Authors: Zhang Xiaowei, Liu Hong, Sun Xiaohong
Format: Article
Language:English
Published: SAGE Publishing 2013-01-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.5772/54869
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spelling doaj-f47e8d80f0f848a5a97d9521b1f66d192020-11-25T02:55:15ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142013-01-011010.5772/5486910.5772_54869Object Tracking with an Evolutionary Particle Filter Based on Self-Adaptive Multi-Features FusionZhang Xiaowei0Liu Hong1Sun Xiaohong2 Shandong Provincial Key Laboratory for Novel Distributed Computer Software Technology, Jinan, China Shandong Provincial Key Laboratory for Novel Distributed Computer Software Technology, Jinan, China Shandong Provincial Key Laboratory for Novel Distributed Computer Software Technology, Jinan, ChinaParticle filter algorithms are widely used for object tracking in video sequences, but the standard particle filter algorithm cannot solve the validity of particles ideally. To solve the problems of particle degeneration and sample impoverishment in a particle filter tracking algorithm, an improved object tracking algorithm is proposed, which combines a multi-feature fusion method and a genetic evolution mechanism. The algorithm dynamically computes the feature's fusion weight by the discriminability of each vision feature and then constructs the important density function based on selecting a feature's fusion method adaptively. Moreover, a self-adaptive genetic evolutionary mechanism is introduced into the particle resampling process and makes the particle become an agent with the ability of dynamic self-adaption. With self-adaptive crossover and mutation operators, the evolution system produces a large number of new particles, which can better approximate the true state of the tracking object. The experimental results show that the proposed object tracking algorithm surpasses the conventional particle filter on both robustness and accuracy, even though the tracking object is very challenging regarding illumination variation, structural deformation, the interference of similar targets and occlusion.https://doi.org/10.5772/54869
collection DOAJ
language English
format Article
sources DOAJ
author Zhang Xiaowei
Liu Hong
Sun Xiaohong
spellingShingle Zhang Xiaowei
Liu Hong
Sun Xiaohong
Object Tracking with an Evolutionary Particle Filter Based on Self-Adaptive Multi-Features Fusion
International Journal of Advanced Robotic Systems
author_facet Zhang Xiaowei
Liu Hong
Sun Xiaohong
author_sort Zhang Xiaowei
title Object Tracking with an Evolutionary Particle Filter Based on Self-Adaptive Multi-Features Fusion
title_short Object Tracking with an Evolutionary Particle Filter Based on Self-Adaptive Multi-Features Fusion
title_full Object Tracking with an Evolutionary Particle Filter Based on Self-Adaptive Multi-Features Fusion
title_fullStr Object Tracking with an Evolutionary Particle Filter Based on Self-Adaptive Multi-Features Fusion
title_full_unstemmed Object Tracking with an Evolutionary Particle Filter Based on Self-Adaptive Multi-Features Fusion
title_sort object tracking with an evolutionary particle filter based on self-adaptive multi-features fusion
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2013-01-01
description Particle filter algorithms are widely used for object tracking in video sequences, but the standard particle filter algorithm cannot solve the validity of particles ideally. To solve the problems of particle degeneration and sample impoverishment in a particle filter tracking algorithm, an improved object tracking algorithm is proposed, which combines a multi-feature fusion method and a genetic evolution mechanism. The algorithm dynamically computes the feature's fusion weight by the discriminability of each vision feature and then constructs the important density function based on selecting a feature's fusion method adaptively. Moreover, a self-adaptive genetic evolutionary mechanism is introduced into the particle resampling process and makes the particle become an agent with the ability of dynamic self-adaption. With self-adaptive crossover and mutation operators, the evolution system produces a large number of new particles, which can better approximate the true state of the tracking object. The experimental results show that the proposed object tracking algorithm surpasses the conventional particle filter on both robustness and accuracy, even though the tracking object is very challenging regarding illumination variation, structural deformation, the interference of similar targets and occlusion.
url https://doi.org/10.5772/54869
work_keys_str_mv AT zhangxiaowei objecttrackingwithanevolutionaryparticlefilterbasedonselfadaptivemultifeaturesfusion
AT liuhong objecttrackingwithanevolutionaryparticlefilterbasedonselfadaptivemultifeaturesfusion
AT sunxiaohong objecttrackingwithanevolutionaryparticlefilterbasedonselfadaptivemultifeaturesfusion
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