Cognitive Learning, Monitoring and Assistance of Industrial Workflows Using Egocentric Sensor Networks.

Today, the workflows that are involved in industrial assembly and production activities are becoming increasingly complex. To efficiently and safely perform these workflows is demanding on the workers, in particular when it comes to infrequent or repetitive tasks. This burden on the workers can be e...

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Main Authors: Gabriele Bleser, Dima Damen, Ardhendu Behera, Gustaf Hendeby, Katharina Mura, Markus Miezal, Andrew Gee, Nils Petersen, Gustavo Maçães, Hugo Domingues, Dominic Gorecky, Luis Almeida, Walterio Mayol-Cuevas, Andrew Calway, Anthony G Cohn, David C Hogg, Didier Stricker
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4488426?pdf=render
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spelling doaj-d02be13f2c3d47ccbd9b2ff6eab58e422020-11-24T20:45:05ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01106e012776910.1371/journal.pone.0127769Cognitive Learning, Monitoring and Assistance of Industrial Workflows Using Egocentric Sensor Networks.Gabriele BleserDima DamenArdhendu BeheraGustaf HendebyKatharina MuraMarkus MiezalAndrew GeeNils PetersenGustavo MaçãesHugo DominguesDominic GoreckyLuis AlmeidaWalterio Mayol-CuevasAndrew CalwayAnthony G CohnDavid C HoggDidier StrickerToday, the workflows that are involved in industrial assembly and production activities are becoming increasingly complex. To efficiently and safely perform these workflows is demanding on the workers, in particular when it comes to infrequent or repetitive tasks. This burden on the workers can be eased by introducing smart assistance systems. This article presents a scalable concept and an integrated system demonstrator designed for this purpose. The basic idea is to learn workflows from observing multiple expert operators and then transfer the learnt workflow models to novice users. Being entirely learning-based, the proposed system can be applied to various tasks and domains. The above idea has been realized in a prototype, which combines components pushing the state of the art of hardware and software designed with interoperability in mind. The emphasis of this article is on the algorithms developed for the prototype: 1) fusion of inertial and visual sensor information from an on-body sensor network (BSN) to robustly track the user's pose in magnetically polluted environments; 2) learning-based computer vision algorithms to map the workspace, localize the sensor with respect to the workspace and capture objects, even as they are carried; 3) domain-independent and robust workflow recovery and monitoring algorithms based on spatiotemporal pairwise relations deduced from object and user movement with respect to the scene; and 4) context-sensitive augmented reality (AR) user feedback using a head-mounted display (HMD). A distinguishing key feature of the developed algorithms is that they all operate solely on data from the on-body sensor network and that no external instrumentation is needed. The feasibility of the chosen approach for the complete action-perception-feedback loop is demonstrated on three increasingly complex datasets representing manual industrial tasks. These limited size datasets indicate and highlight the potential of the chosen technology as a combined entity as well as point out limitations of the system.http://europepmc.org/articles/PMC4488426?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Gabriele Bleser
Dima Damen
Ardhendu Behera
Gustaf Hendeby
Katharina Mura
Markus Miezal
Andrew Gee
Nils Petersen
Gustavo Maçães
Hugo Domingues
Dominic Gorecky
Luis Almeida
Walterio Mayol-Cuevas
Andrew Calway
Anthony G Cohn
David C Hogg
Didier Stricker
spellingShingle Gabriele Bleser
Dima Damen
Ardhendu Behera
Gustaf Hendeby
Katharina Mura
Markus Miezal
Andrew Gee
Nils Petersen
Gustavo Maçães
Hugo Domingues
Dominic Gorecky
Luis Almeida
Walterio Mayol-Cuevas
Andrew Calway
Anthony G Cohn
David C Hogg
Didier Stricker
Cognitive Learning, Monitoring and Assistance of Industrial Workflows Using Egocentric Sensor Networks.
PLoS ONE
author_facet Gabriele Bleser
Dima Damen
Ardhendu Behera
Gustaf Hendeby
Katharina Mura
Markus Miezal
Andrew Gee
Nils Petersen
Gustavo Maçães
Hugo Domingues
Dominic Gorecky
Luis Almeida
Walterio Mayol-Cuevas
Andrew Calway
Anthony G Cohn
David C Hogg
Didier Stricker
author_sort Gabriele Bleser
title Cognitive Learning, Monitoring and Assistance of Industrial Workflows Using Egocentric Sensor Networks.
title_short Cognitive Learning, Monitoring and Assistance of Industrial Workflows Using Egocentric Sensor Networks.
title_full Cognitive Learning, Monitoring and Assistance of Industrial Workflows Using Egocentric Sensor Networks.
title_fullStr Cognitive Learning, Monitoring and Assistance of Industrial Workflows Using Egocentric Sensor Networks.
title_full_unstemmed Cognitive Learning, Monitoring and Assistance of Industrial Workflows Using Egocentric Sensor Networks.
title_sort cognitive learning, monitoring and assistance of industrial workflows using egocentric sensor networks.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Today, the workflows that are involved in industrial assembly and production activities are becoming increasingly complex. To efficiently and safely perform these workflows is demanding on the workers, in particular when it comes to infrequent or repetitive tasks. This burden on the workers can be eased by introducing smart assistance systems. This article presents a scalable concept and an integrated system demonstrator designed for this purpose. The basic idea is to learn workflows from observing multiple expert operators and then transfer the learnt workflow models to novice users. Being entirely learning-based, the proposed system can be applied to various tasks and domains. The above idea has been realized in a prototype, which combines components pushing the state of the art of hardware and software designed with interoperability in mind. The emphasis of this article is on the algorithms developed for the prototype: 1) fusion of inertial and visual sensor information from an on-body sensor network (BSN) to robustly track the user's pose in magnetically polluted environments; 2) learning-based computer vision algorithms to map the workspace, localize the sensor with respect to the workspace and capture objects, even as they are carried; 3) domain-independent and robust workflow recovery and monitoring algorithms based on spatiotemporal pairwise relations deduced from object and user movement with respect to the scene; and 4) context-sensitive augmented reality (AR) user feedback using a head-mounted display (HMD). A distinguishing key feature of the developed algorithms is that they all operate solely on data from the on-body sensor network and that no external instrumentation is needed. The feasibility of the chosen approach for the complete action-perception-feedback loop is demonstrated on three increasingly complex datasets representing manual industrial tasks. These limited size datasets indicate and highlight the potential of the chosen technology as a combined entity as well as point out limitations of the system.
url http://europepmc.org/articles/PMC4488426?pdf=render
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