Analysis and Augmentation of Human Performance on Telerobotic Search Problems

Search is an essential technology for rescue and other mobile robot applications. Many robotic search and rescue systems rely on teleoperation. One of the key problems in search tasks is how to cover the search space efficiently. Search is also central to humans' daily activities. This paper an...

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Main Authors: Kuo-Shih Tseng, Berenice Mettler
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9042341/
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spelling doaj-a62b6cedff9443c3936c194a9d4bec1e2021-03-30T03:15:35ZengIEEEIEEE Access2169-35362020-01-018565905660610.1109/ACCESS.2020.29819789042341Analysis and Augmentation of Human Performance on Telerobotic Search ProblemsKuo-Shih Tseng0https://orcid.org/0000-0002-7818-5821Berenice Mettler1https://orcid.org/0000-0002-3824-7995Department of Mathematics, National Central University, Taoyuan, TaiwanInternational Computer Science Institute, Berkeley, CA, USASearch is an essential technology for rescue and other mobile robot applications. Many robotic search and rescue systems rely on teleoperation. One of the key problems in search tasks is how to cover the search space efficiently. Search is also central to humans' daily activities. This paper analyzes and models human search behavior using data from actual teleoperation experiments. The analysis of the experimental data uses a novel technique to decompose search data, based on structure learning and K-means clustering. The analysis explores three hypotheses: (1) humans are able to solve a complex search task by breaking it up into smaller tasks, (2) humans consider both coverage and motion cost, and (3) robots can outperform humans in search problems. The enhanced understanding of human search strategies can then be applied to the design of human-robot interfaces and search algorithms. The paper describes a technique for augmenting human search. Since the objective functions in search problems are submodular, greedy algorithms can generate near-optimal subgoals. These subgoals then can be used to guide humans in searching. Experiments showed that the humans' search performance is improved with the subgoals' assistance.https://ieeexplore.ieee.org/document/9042341/Teleroboticsrobot sensing systemshuman-robot interactionrescue robotsmobile robots
collection DOAJ
language English
format Article
sources DOAJ
author Kuo-Shih Tseng
Berenice Mettler
spellingShingle Kuo-Shih Tseng
Berenice Mettler
Analysis and Augmentation of Human Performance on Telerobotic Search Problems
IEEE Access
Telerobotics
robot sensing systems
human-robot interaction
rescue robots
mobile robots
author_facet Kuo-Shih Tseng
Berenice Mettler
author_sort Kuo-Shih Tseng
title Analysis and Augmentation of Human Performance on Telerobotic Search Problems
title_short Analysis and Augmentation of Human Performance on Telerobotic Search Problems
title_full Analysis and Augmentation of Human Performance on Telerobotic Search Problems
title_fullStr Analysis and Augmentation of Human Performance on Telerobotic Search Problems
title_full_unstemmed Analysis and Augmentation of Human Performance on Telerobotic Search Problems
title_sort analysis and augmentation of human performance on telerobotic search problems
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Search is an essential technology for rescue and other mobile robot applications. Many robotic search and rescue systems rely on teleoperation. One of the key problems in search tasks is how to cover the search space efficiently. Search is also central to humans' daily activities. This paper analyzes and models human search behavior using data from actual teleoperation experiments. The analysis of the experimental data uses a novel technique to decompose search data, based on structure learning and K-means clustering. The analysis explores three hypotheses: (1) humans are able to solve a complex search task by breaking it up into smaller tasks, (2) humans consider both coverage and motion cost, and (3) robots can outperform humans in search problems. The enhanced understanding of human search strategies can then be applied to the design of human-robot interfaces and search algorithms. The paper describes a technique for augmenting human search. Since the objective functions in search problems are submodular, greedy algorithms can generate near-optimal subgoals. These subgoals then can be used to guide humans in searching. Experiments showed that the humans' search performance is improved with the subgoals' assistance.
topic Telerobotics
robot sensing systems
human-robot interaction
rescue robots
mobile robots
url https://ieeexplore.ieee.org/document/9042341/
work_keys_str_mv AT kuoshihtseng analysisandaugmentationofhumanperformanceonteleroboticsearchproblems
AT berenicemettler analysisandaugmentationofhumanperformanceonteleroboticsearchproblems
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