Motion planning with constraints is an important part of many real-world robotic systems. In this work, we study manifold learning methods to learn such constraints from data. We …
Deep reinforcement learning (RL) agents are able to learn contact-rich manipulation tasks by maximizing a reward signal, but require large amounts of experience, especially in …
Autonomous robots have real-world applications in diverse fields, such as mobile manipulation and environmental exploration, and many such tasks benefit from a hands-off …
Abstract Gaussian Process Manifold Learning is a novel model based machine learning method that uses a probabilistic approach to represent a set of data as a manifold. The …
Traditionally, models for control and motion planning were derived from physical properties of the system. While such a classical approach provides mathematical performance …