Obstacle avoidance, and by extension collision checking, is a basic requirement for robot autonomy. Most classical approaches to collision-checking ignore the uncertainties associated with the robot and obstacle’s geometry and position. It is natural to use a probabilistic description. of the uncertainties. However, constraint satisfaction cannot be guaranteed, in this case, and collision constraints must instead be converted to chance constraints. Standard results for linear probabilistic constraint evaluation have been applied to probabilistic collision evaluation; however, this approach ignores the uncertainty associated with the sensed obstacle. An alternative formulation of probabilistic collision checking that accounts for robot and...
Abstract — The paper addresses the problem of a mobile robot navigating in a dynamic uncertain envir...
The presence of uncertainty in the robot configuration and that of the other static or moving entiti...
Navigation in large dynamic spaces has been often adressed using deterministic representations, fast...
Obstacle avoidance, and by extension collision checking, is a basic requirement for robot autonomy....
Risk minimization has historically been tackled with chance constraints or with risk-aware measure a...
We present a probabilistic method for noisy sensor based robotic navigation in dynamic environments....
We present a probabilistic method for noisy sensor based robotic navigation in dynamic environments....
We present a probabilistic method for sensor based robotic navigation in dynamic and noisy environme...
This paper describes a method of modeling the motion uncertainty of moving obstacles and its applica...
Characterizing the risk of operations is a fundamental requirement in robotics, and a crucial ingred...
We present an optimization-based method to plan the motion of an autonomous robot under the uncertai...
As robots are being increasingly used in close proximity to humans and objects, it is imperative tha...
International audienceUnexpected events and not modeled properties of the robot environment are some...
Trajectory planning in uncertain environments arises in several autonomous system applications inclu...
© 2019 IEEE. This paper introduces Probabilistic Chekov (p-Chekov), a chance-constrained motion plan...
Abstract — The paper addresses the problem of a mobile robot navigating in a dynamic uncertain envir...
The presence of uncertainty in the robot configuration and that of the other static or moving entiti...
Navigation in large dynamic spaces has been often adressed using deterministic representations, fast...
Obstacle avoidance, and by extension collision checking, is a basic requirement for robot autonomy....
Risk minimization has historically been tackled with chance constraints or with risk-aware measure a...
We present a probabilistic method for noisy sensor based robotic navigation in dynamic environments....
We present a probabilistic method for noisy sensor based robotic navigation in dynamic environments....
We present a probabilistic method for sensor based robotic navigation in dynamic and noisy environme...
This paper describes a method of modeling the motion uncertainty of moving obstacles and its applica...
Characterizing the risk of operations is a fundamental requirement in robotics, and a crucial ingred...
We present an optimization-based method to plan the motion of an autonomous robot under the uncertai...
As robots are being increasingly used in close proximity to humans and objects, it is imperative tha...
International audienceUnexpected events and not modeled properties of the robot environment are some...
Trajectory planning in uncertain environments arises in several autonomous system applications inclu...
© 2019 IEEE. This paper introduces Probabilistic Chekov (p-Chekov), a chance-constrained motion plan...
Abstract — The paper addresses the problem of a mobile robot navigating in a dynamic uncertain envir...
The presence of uncertainty in the robot configuration and that of the other static or moving entiti...
Navigation in large dynamic spaces has been often adressed using deterministic representations, fast...