Semantic Aware Resampling For Robust Particle Filter Localization

dc.contributor.advisorSilaghi, Marius
dc.contributor.authorAlghanmi, Akram
dc.date.accessioned2026-01-20T06:23:48Z
dc.date.issued2026
dc.description.abstractParticle filters provide a principled Bayesian framework for robot localization under uncertainty, representing belief states through weighted sample sets updated via motion prediction and observation integration. Their effectiveness critically depends on the resampling strategy, which governs particle diversity maintenance while avoiding degeneracy. Traditional methods—multinomial, systematic, residual, and stratified resampling—have been extensively studied, yet the potential for semantic information to guide resampling decisions in feature-rich environments remains unexplored. We introduce Semantic-Stratified Importance Sampling (SSIS), a novel resampling strategy that partitions particles based on proximity to semantic feature categories rather than uniform weight intervals, aiming to preserve hypotheses across different semantic contexts. Through comprehensive evaluation comprising 9,500 independent trials, we conduct the first systematic comparison of SSIS against all four traditional methods, isolating the effects of particle count, semantic feature richness, motion noise, and observation confusion. Our rigorous 100-trial-per-configuration methodology distinguishes algorithmic differences from random variance, addressing a methodological gap in particle filter evaluation.
dc.format.extent110
dc.identifier.urihttps://hdl.handle.net/20.500.14154/77978
dc.language.isoen_US
dc.publisherSaudi Digital Library
dc.subjectRobotics
dc.subjectlocaliazation
dc.subjectparticle filter
dc.titleSemantic Aware Resampling For Robust Particle Filter Localization
dc.typeThesis
sdl.degree.departmentElectrical Engineering and Computer Science
sdl.degree.disciplineArtifticial Intelligience, Robotics, Localization
sdl.degree.grantorFlorida Institute of Technology
sdl.degree.nameDoctor of Philosoph

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