Grasping and Manipulation with a Multi-Fingered Hand

02/09/2020
by   Claudio Zito, et al.
0

This thesis is concerned with deriving planning algorithms for robot manipulators. Manipulation has two effects, the robot has a physical effect on the object, and it also acquires information about the object. This thesis presents algorithms that treat both problems. First, I present an extension of the well-known piano mover's problem where a robot pushing an object must plan its movements as well as those of the object. This requires simultaneous planning in the joint space of the robot and the configuration space of the object, in contrast to the original problem which only requires planning in the latter space. The effects of a robot action on the object configuration are determined by the non-invertible rigid body mechanics. Second, I consider planning under uncertainty and in particular planning for information effects. I consider the case where a robot has to reach and grasp an object under pose uncertainty caused by shape incompleteness. The approach presented in this report is to study and possibly extend a new approach to artificial intelligence (A.I.) which has emerged in the last years in response to the necessity of building intelligent controllers for agents operating in unstructured stochastic environments. Such agents require the ability to learn by interaction with its environment an optimal action-selection behaviour. The main issue is that real-world problems are usually dynamic and unpredictable. Thus, the agent needs to update constantly its current image of the world using its sensors, which provide only a noisy description of the surrounding environment. Although there are different schools of thinking, with their own set of techniques, a brand new direction which unifies many A.I. researches is to formalise such agent/environment interactions as embedded systems with stochastic dynamics.

READ FULL TEXT
research
02/09/2020

Thesis Proposal

In this thesis, we will attempt to develop new algorithms that enable an...
research
12/04/2018

Sensorless Pose Determination using Randomized Action Sequences

This paper is a study of 2D manipulation without sensing and planning, b...
research
08/31/2021

Planning for Dexterous Ungrasping: Secure Ungrasping through Dexterous Manipulation

This paper presents a robotic manipulation technique for dexterous ungra...
research
03/13/2019

Hypothesis-based Belief Planning for Dexterous Grasping

Belief space planning is a viable alternative to formalise partially obs...
research
10/08/2022

Motion Planning on Visual Manifolds

In this thesis, we propose an alternative characterization of the notion...
research
01/24/2023

Effective Baselines for Multiple Object Rearrangement Planning in Partially Observable Mapped Environments

Many real-world tasks, from house-cleaning to cooking, can be formulated...
research
01/24/2023

Generalized Object Search

Future collaborative robots must be capable of finding objects. As such ...

Please sign up or login with your details

Forgot password? Click here to reset