Optimization of particle filter tracking algorithm based on weakly supervised attribute learning

Abstract This study proposes an optimization method for particle filter tracking algorithm to solve the issues of low recognition efficiency and poor tracking accuracy faced by existing target tracking algorithms in complex environments. This method combines weakly supervised learning with energy fu...

Full description

Saved in:
Bibliographic Details
Main Authors: Hui Zhang, Dawang Shen
Format: Article
Language:English
Published: Springer 2025-05-01
Series:Discover Artificial Intelligence
Subjects:
Online Access:https://doi.org/10.1007/s44163-025-00300-1
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850269169018208256
author Hui Zhang
Dawang Shen
author_facet Hui Zhang
Dawang Shen
author_sort Hui Zhang
collection DOAJ
description Abstract This study proposes an optimization method for particle filter tracking algorithm to solve the issues of low recognition efficiency and poor tracking accuracy faced by existing target tracking algorithms in complex environments. This method combines weakly supervised learning with energy function optimization to raise the efficiency of image feature annotation in object detection models. Besides, to raise the robustness and accuracy of target tracking algorithms in complex environments, an improved particle filter tracking method based on accelerated robust feature matching is proposed. The simulation results show that compared with recurrent neural networks, this method reduces the recognition errors of target center point and target size by 36.61% and 37.53% respectively during the daytime. Compared with the support vector machine model, this method reduces recognition errors by 23.01% and 28.43%, respectively. In the case where the target is obstructed, the tracking accuracy of the raised method is as high as 0.95. The outcomes denote that the raised method has excellent robustness and target tracking accuracy, and can provide effective solutions for target tracking problems in complex environments.
format Article
id doaj-art-db222e79ad1a41fca18f3a46b97dacb1
institution OA Journals
issn 2731-0809
language English
publishDate 2025-05-01
publisher Springer
record_format Article
series Discover Artificial Intelligence
spelling doaj-art-db222e79ad1a41fca18f3a46b97dacb12025-08-20T01:53:14ZengSpringerDiscover Artificial Intelligence2731-08092025-05-015111510.1007/s44163-025-00300-1Optimization of particle filter tracking algorithm based on weakly supervised attribute learningHui Zhang0Dawang Shen1Academic Affairs Division, Maoming PolytechnicDepartment of Computer Engineering, Maoming PolytechnicAbstract This study proposes an optimization method for particle filter tracking algorithm to solve the issues of low recognition efficiency and poor tracking accuracy faced by existing target tracking algorithms in complex environments. This method combines weakly supervised learning with energy function optimization to raise the efficiency of image feature annotation in object detection models. Besides, to raise the robustness and accuracy of target tracking algorithms in complex environments, an improved particle filter tracking method based on accelerated robust feature matching is proposed. The simulation results show that compared with recurrent neural networks, this method reduces the recognition errors of target center point and target size by 36.61% and 37.53% respectively during the daytime. Compared with the support vector machine model, this method reduces recognition errors by 23.01% and 28.43%, respectively. In the case where the target is obstructed, the tracking accuracy of the raised method is as high as 0.95. The outcomes denote that the raised method has excellent robustness and target tracking accuracy, and can provide effective solutions for target tracking problems in complex environments.https://doi.org/10.1007/s44163-025-00300-1Weakly supervised attribute learningParticle filtering algorithmObject detectionTarget trackingTracking accuracy
spellingShingle Hui Zhang
Dawang Shen
Optimization of particle filter tracking algorithm based on weakly supervised attribute learning
Discover Artificial Intelligence
Weakly supervised attribute learning
Particle filtering algorithm
Object detection
Target tracking
Tracking accuracy
title Optimization of particle filter tracking algorithm based on weakly supervised attribute learning
title_full Optimization of particle filter tracking algorithm based on weakly supervised attribute learning
title_fullStr Optimization of particle filter tracking algorithm based on weakly supervised attribute learning
title_full_unstemmed Optimization of particle filter tracking algorithm based on weakly supervised attribute learning
title_short Optimization of particle filter tracking algorithm based on weakly supervised attribute learning
title_sort optimization of particle filter tracking algorithm based on weakly supervised attribute learning
topic Weakly supervised attribute learning
Particle filtering algorithm
Object detection
Target tracking
Tracking accuracy
url https://doi.org/10.1007/s44163-025-00300-1
work_keys_str_mv AT huizhang optimizationofparticlefiltertrackingalgorithmbasedonweaklysupervisedattributelearning
AT dawangshen optimizationofparticlefiltertrackingalgorithmbasedonweaklysupervisedattributelearning