Object Tracking based on Quantum Particle Swarm Optimization
Rajesh Misra, Kumar S. Ray

TL;DR
This paper introduces a novel object tracking algorithm using Quantum Particle Swarm Optimization (QPSO) that effectively handles dynamic and static backgrounds, offering faster performance and robustness against common tracking challenges.
Contribution
The paper presents a new QPSO-based object tracking method that improves speed and accuracy over traditional PSO, especially in complex background conditions.
Findings
Runs 90% faster than basic PSO
Effective in dynamic and static backgrounds
Uses parallel processing for efficiency
Abstract
In Computer Vision domain, moving Object Tracking considered as one of the toughest problem.As there so many factors associated like illumination of light, noise, occlusion, sudden start and stop of moving object, shading which makes tracking even harder problem not only for dynamic background but also for static background.In this paper we present a new object tracking algorithm based on Dominant points on tracked object using Quantum particle swarm optimization (QPSO) which is a new different version of PSO based on Quantum theory. The novelty in our approach is that it can be successfully applicable in variable background as well as static background and application of quantum PSO makes the algorithm runs lot faster where other basic PSO algorithm failed to do so due to heavy computation.In our approach firstly dominants points of tracked objects detected, then a group of particles…
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