Common methods for learning robot dynamics assume motion is continuous, causing unrealistic model predictions for systems undergoing discontinuous impact and stiction …
An efficient, generalizable physical simulator with universal uncertainty estimates has wide applications in robot state estimation, planning, and control. In this paper, we build such a …
Physics engines play an important role in robot planning and control; however, many real- world control problems involve complex contact dynamics that cannot be characterized …
The force modulation of robotic manipulators has been extensively studied for several decades. However, it is not yet commonly used in safety-critical applications due to a lack of …
Inspired by recent strides in empirical efficacy of implicit learning in many robotics tasks, we seek to understand the theoretical benefits of implicit formulations in the face of nearly …
Robotic manipulation can greatly benefit from the data efficiency, robustness, and predictability of model-based methods if robots can quickly generate models of novel objects …
The ability to reason about and predict the outcome of contacts is paramount to the successful execution of many robot tasks. Analytical rigid-body contact models are used …
A human's remarkable ability to manipulate unfamiliar objects with little prior knowledge of them is a constant inspiration for robotics research. Despite the interest of the research …
D Romeres, DK Jha, A DallaLibera… - … on Robotics and …, 2019 - ieeexplore.ieee.org
This paper presents a problem of model learning for the purpose of learning how to navigate a ball to a goal state in a circular maze environment with two degrees of freedom. The …