ROJan 9, 2020

Benchmarking In-Hand Manipulation

arXiv:2001.03070v147 citations
AI Analysis

This addresses the need for standardized evaluation in robotics, but it is incremental as it builds on existing datasets and methods.

The paper introduces a benchmark for evaluating robotic in-hand manipulation systems, focusing on planning and control to change object poses using fingers or the environment, and provides metrics, software, and examples for assessment.

The purpose of this benchmark is to evaluate the planning and control aspects of robotic in-hand manipulation systems. The goal is to assess the system's ability to change the pose of a hand-held object by either using the fingers, environment or a combination of both. Given an object surface mesh from the YCB data-set, we provide examples of initial and goal states (i.e.\ static object poses and fingertip locations) for various in-hand manipulation tasks. We further propose metrics that measure the error in reaching the goal state from a specific initial state, which, when aggregated across all tasks, also serves as a measure of the system's in-hand manipulation capability. We provide supporting software, task examples, and evaluation results associated with the benchmark. All the supporting material is available at https://robot-learning.cs.utah.edu/project/benchmarking_in_hand_manipulation

Foundations

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