Abstract. Belief space planning provides a principled framework to compute motion plans that explicitly gather information from sensing, as necessary, to reduce uncertainty about the robot and the environment. We consider the prob-lem of planning in Gaussian belief spaces, which are parameterized in terms of mean states and covariances describing the uncertainty. In this work, we show that it is possible to compute locally optimal plans without including the covari-ance in direct trajectory optimization formulations of the problem. As a result, the dimensionality of the problem scales linearly in the state dimension instead of quadratically, as would be the case if we were to include the covariance in the optimization. We accomplish this by...
Abstract—When a mobile agent does not known its position perfectly, incorporating the predicted unce...
In many real-world robotic scenarios, we cannot assume exact knowledge about a robot’s state due to ...
In many real-world robotic scenarios, we cannot assume exact knowledge about a robot’s state due to ...
Planning in belief space provides a unified approach to tightly couple the perception, planning and ...
Abstract We investigate the problem of planning under uncertainty, which is of interest in several r...
We consider the partially observable control problem where it is potentially necessary to perform co...
16th International Symposium on Robotics Research (ISRR 2013), 16-19 December 2013, Singapore.We in...
Abstract — We consider the partially observable control prob-lem where it is potentially necessary t...
© Springer International Publishing Switzerland 2017. The limited nature of robot sensors make many ...
We consider the partially observable control problem where it is potentially necessary to perform co...
Abstract—This work investigates the problem of planning under uncertainty, with application to mobil...
© The Author(s) 2015DOI: 10.1177/0278364914561102We investigate the problem of planning under uncert...
In this paper, we address the problem of sampling-based motion planning under motion and measurement...
We cast the partially observable control problem as a fully observable underactuated stochastic con...
Abstract — This paper reports on a Gaussian belief-space planning formulation for mobile robots that...
Abstract—When a mobile agent does not known its position perfectly, incorporating the predicted unce...
In many real-world robotic scenarios, we cannot assume exact knowledge about a robot’s state due to ...
In many real-world robotic scenarios, we cannot assume exact knowledge about a robot’s state due to ...
Planning in belief space provides a unified approach to tightly couple the perception, planning and ...
Abstract We investigate the problem of planning under uncertainty, which is of interest in several r...
We consider the partially observable control problem where it is potentially necessary to perform co...
16th International Symposium on Robotics Research (ISRR 2013), 16-19 December 2013, Singapore.We in...
Abstract — We consider the partially observable control prob-lem where it is potentially necessary t...
© Springer International Publishing Switzerland 2017. The limited nature of robot sensors make many ...
We consider the partially observable control problem where it is potentially necessary to perform co...
Abstract—This work investigates the problem of planning under uncertainty, with application to mobil...
© The Author(s) 2015DOI: 10.1177/0278364914561102We investigate the problem of planning under uncert...
In this paper, we address the problem of sampling-based motion planning under motion and measurement...
We cast the partially observable control problem as a fully observable underactuated stochastic con...
Abstract — This paper reports on a Gaussian belief-space planning formulation for mobile robots that...
Abstract—When a mobile agent does not known its position perfectly, incorporating the predicted unce...
In many real-world robotic scenarios, we cannot assume exact knowledge about a robot’s state due to ...
In many real-world robotic scenarios, we cannot assume exact knowledge about a robot’s state due to ...