Publication | Closed Access
Bayesian Estimation of Wheelchair Driver Intents: Modeling Intents as Geometric Paths Tracked by the Driver
48
Citations
9
References
2006
Year
Unknown Venue
EngineeringSocially Assistive RobotDisabilityAdvanced Driver-assistance SystemWheelchair Driver IntentsKinesiologyDriver BehaviorSystems EngineeringIntention RecognitionRobot LearningStatisticsManmachine InteractionRoboticsAssistive TechnologyMedicineGeometric PathsRehabilitationAutonomous DrivingDriver PerformanceMan-machine InterfaceBayesian EstimationEye TrackingAutomationAssistive DeviceHuman-computer InteractionStatistical InferenceAssistive RobotDecision RulesWheelchair Platform ShariotoHuman MovementElectric Wheelchair
Many elderly and disabled people today experience difficulties when manoeuvring an electric wheelchair. In order to help these people, several robotic assistance platforms have been devised in the past. In most cases, these platforms consist of separate assistance modes, and heuristic rules are used to automatically decide which assistance mode should be selected in each time step. As these decision rules are often hard-coded and do not take uncertainty regarding the user's intent into account, assistive actions may lead to confusion or even irritation if the user's actual plans do not correspond to the assistive system's behavior. In contrast to previous approaches, this paper presents a more user-centered approach for recognizing the intent of wheelchair drivers, which explicitly estimates the uncertainty on the user's intent. The paper shows the benefit of estimating this uncertainty using experimental results with our wheelchair platform Sharioto
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