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A Reinforcement Learning Approach to Redirected Walking with Passive Haptic Feedback

Ze-Yin Chen, Yi-Jun Li, Miao Wang, Frank Steinicke, Qinping Zhao

202125 citationsDOI

Abstract

Various redirected walking (RDW) techniques have been proposed, which unwittingly manipulate the mapping from the user’s physical locomotion to motions of the virtual camera. Thereby, RDW techniques guide users on physical paths with the goal to keep them inside a limited tracking area, whereas users perceive the illusion of being able to walk infinitely in the virtual environment. However, the inconsistency between the user’s virtual and physical location hinders passive haptic feedback when the user interacts with virtual objects, which are represented by physical props in the real environment.In this paper, we present a novel reinforcement learning approach towards RDW with passive haptics. With a novel dense reward function, our method learns to jointly consider physical boundary avoidance and consistency of user-object positioning between virtual and physical spaces. The weights of reward and penalty terms in the reward function are dynamically adjusted to adaptively balance term impacts during the walking process. Experimental results demonstrate the advantages of our technique in comparison to previous approaches. Finally, the code of our technique is provided as an open-source solution.

Topics & Concepts

Computer scienceHaptic technologyReinforcement learningHuman–computer interactionConsistency (knowledge bases)Process (computing)Object (grammar)IllusionVirtual machineVirtual realitySimulationComputer visionArtificial intelligenceBiologyNeuroscienceOperating systemVirtual Reality Applications and ImpactsTactile and Sensory InteractionsAdvanced Vision and Imaging
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