Abstract — Motion planning in belief space (under motion and sensing uncertainty) is a challenging problem due to the compu-tational intractability of its exact solution. The Feedback-based Information RoadMap (FIRM) framework made an important theoretical step toward enabling roadmap-based planning in belief space and provided a computationally tractable version of belief space planning. However, there are still challenges in applying belief space planners to physical systems, such as the discrepancy between computational models and real physical models. In this paper, we propose a dynamic replanning scheme in belief space to address such challenges. Moreover, we present techniques to cope with changes in the environment (e.g., changes in ...
We present an integrated Task-Motion Planning (TMP) framework for navigation in large-scale environm...
In many real-world robotic scenarios, we cannot assume exact knowledge about a robot’s state due to ...
Abstract — This paper reports on a Gaussian belief-space planning formulation for mobile robots that...
Methods based on the POMDP (Partially-Observable Markov Decision Process) framework for planning und...
© Springer International Publishing Switzerland 2017. The limited nature of robot sensors make many ...
16th International Symposium on Robotics Research (ISRR 2013), 16-19 December 2013, Singapore.We in...
Autonomous robots operating in large knowledge-intensive domains require planning in the discrete (t...
We present an integrated Task-Motion Planning framework for robot navigation in belief space. Autono...
In this paper, we describe an integrated strategy for planning, perception, state-estimation and act...
Abstract—This work investigates the problem of planning under uncertainty, with application to mobil...
Navigating through the environment is a fundamental capability for mobile robots, which is still ver...
Abstract—In order to fully exploit the capabilities of a robotic systems, it is necessary to conside...
© The Author(s) 2015DOI: 10.1177/0278364914561102We investigate the problem of planning under uncert...
Planning in belief space provides a unified approach to tightly couple the perception, planning and ...
Abstract — This paper presents an online planning/replanning strategy for dynamical systems, in the ...
We present an integrated Task-Motion Planning (TMP) framework for navigation in large-scale environm...
In many real-world robotic scenarios, we cannot assume exact knowledge about a robot’s state due to ...
Abstract — This paper reports on a Gaussian belief-space planning formulation for mobile robots that...
Methods based on the POMDP (Partially-Observable Markov Decision Process) framework for planning und...
© Springer International Publishing Switzerland 2017. The limited nature of robot sensors make many ...
16th International Symposium on Robotics Research (ISRR 2013), 16-19 December 2013, Singapore.We in...
Autonomous robots operating in large knowledge-intensive domains require planning in the discrete (t...
We present an integrated Task-Motion Planning framework for robot navigation in belief space. Autono...
In this paper, we describe an integrated strategy for planning, perception, state-estimation and act...
Abstract—This work investigates the problem of planning under uncertainty, with application to mobil...
Navigating through the environment is a fundamental capability for mobile robots, which is still ver...
Abstract—In order to fully exploit the capabilities of a robotic systems, it is necessary to conside...
© The Author(s) 2015DOI: 10.1177/0278364914561102We investigate the problem of planning under uncert...
Planning in belief space provides a unified approach to tightly couple the perception, planning and ...
Abstract — This paper presents an online planning/replanning strategy for dynamical systems, in the ...
We present an integrated Task-Motion Planning (TMP) framework for navigation in large-scale environm...
In many real-world robotic scenarios, we cannot assume exact knowledge about a robot’s state due to ...
Abstract — This paper reports on a Gaussian belief-space planning formulation for mobile robots that...