This paper describes a robot controller which uses proba-bilistic decision-making techniques at the highest-level of behavior control. The POMDP-based robot controller has the ability to incorporate noisy and partial sensor informa-tion, and can arbitrate between information gathering and performance-related actions. The complexity of the robot control domain requires a POMDP model that is beyond the capability of current exact POMDP solvers, therefore we present a hierarchical variant of the POMDP model which exploits structure in the problem domain to accel-erate planning. This POMDP controller is implemented and tested onboard a mobile robot in the context of an in-teractive service task. During the course of experiments conducted in an ...
One of the fundamental challenges in the design of autonomous robots is to reliably compute motion s...
Planning under partial observability is both challenging and critical for reliable robot operation. ...
Motion planning under uncertainty that can efficiently take into account changes in the environment ...
Partially Observable Markov Decision Process models (POMDPs) have been applied to low-level robot co...
POMDPs provide a rich framework for planning and control in partially observable domains. Recent new...
Abstract—Key challenges to widespread deployment of mobile robots include collaboration and the abil...
Publisher Copyright: IEEENoisy sensing, imperfect control, and environment changes are defining char...
Flexible general purpose robots need to tailor their visual pro-cessing to their task, on the fly. W...
This dissertation presents a two level architecture for goal-directed robot control. The low level a...
Motion planning in uncertain and dynamic environments is critical for reliable operation of autonomo...
RECENT research in the field of robotics has demonstrated the utility of probabilistic models for pe...
Researchers at the Centre for Studies in Aging and at Simon Fraser University are developing ubiquit...
Motion planning in uncertain environments is an essential feature of autonomous robots. Partially...
Decision-making for autonomous systems acting in real world domains are complex and difficult to for...
International audienceService robotics in public spaces with HRI constraints provide several challen...
One of the fundamental challenges in the design of autonomous robots is to reliably compute motion s...
Planning under partial observability is both challenging and critical for reliable robot operation. ...
Motion planning under uncertainty that can efficiently take into account changes in the environment ...
Partially Observable Markov Decision Process models (POMDPs) have been applied to low-level robot co...
POMDPs provide a rich framework for planning and control in partially observable domains. Recent new...
Abstract—Key challenges to widespread deployment of mobile robots include collaboration and the abil...
Publisher Copyright: IEEENoisy sensing, imperfect control, and environment changes are defining char...
Flexible general purpose robots need to tailor their visual pro-cessing to their task, on the fly. W...
This dissertation presents a two level architecture for goal-directed robot control. The low level a...
Motion planning in uncertain and dynamic environments is critical for reliable operation of autonomo...
RECENT research in the field of robotics has demonstrated the utility of probabilistic models for pe...
Researchers at the Centre for Studies in Aging and at Simon Fraser University are developing ubiquit...
Motion planning in uncertain environments is an essential feature of autonomous robots. Partially...
Decision-making for autonomous systems acting in real world domains are complex and difficult to for...
International audienceService robotics in public spaces with HRI constraints provide several challen...
One of the fundamental challenges in the design of autonomous robots is to reliably compute motion s...
Planning under partial observability is both challenging and critical for reliable robot operation. ...
Motion planning under uncertainty that can efficiently take into account changes in the environment ...