Home /Research /Learning the Next Best View for 3D Point Clouds via Topological Features
MANIPULATION

Learning the Next Best View for 3D Point Clouds via Topological Features

Christopher Collander, William J. Beksi, Manfred Huber

Year
2021
Access
Open access

Abstract

In this paper, we introduce a reinforcement learning approach utilizing a novel topology-based information gain metric for directing the next best view of a noisy 3D sensor. The metric combines the disjoint sections of an observed surface to focus on high-detail features such as holes and concave sections. Experimental results show that our approach can aid in establishing the placement of a robotic sensor to optimize the information provided by its streaming point cloud data. Furthermore, a labeled dataset of 3D objects, a CAD design for a custom robotic manipulator, and software for the transformation, union, and registration of point clouds has been publicly released to the research community.

Keywords

cs.ROcs.AI

Related papers

Browse all MANIPULATION papers