ARiana: Augmented Reality Based In-Situ Annotation of Assembly Videos

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Standard

ARiana : Augmented Reality Based In-Situ Annotation of Assembly Videos. / Pham, Truong An; Moesgen, Tim; Siltanen, Sanni; Bergstrom, Joanna; Xiao, Yu.

I: IEEE Access, Bind 10, 2022, s. 111704-111724.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Pham, TA, Moesgen, T, Siltanen, S, Bergstrom, J & Xiao, Y 2022, 'ARiana: Augmented Reality Based In-Situ Annotation of Assembly Videos', IEEE Access, bind 10, s. 111704-111724. https://doi.org/10.1109/ACCESS.2022.3216015

APA

Pham, T. A., Moesgen, T., Siltanen, S., Bergstrom, J., & Xiao, Y. (2022). ARiana: Augmented Reality Based In-Situ Annotation of Assembly Videos. IEEE Access, 10, 111704-111724. https://doi.org/10.1109/ACCESS.2022.3216015

Vancouver

Pham TA, Moesgen T, Siltanen S, Bergstrom J, Xiao Y. ARiana: Augmented Reality Based In-Situ Annotation of Assembly Videos. IEEE Access. 2022;10:111704-111724. https://doi.org/10.1109/ACCESS.2022.3216015

Author

Pham, Truong An ; Moesgen, Tim ; Siltanen, Sanni ; Bergstrom, Joanna ; Xiao, Yu. / ARiana : Augmented Reality Based In-Situ Annotation of Assembly Videos. I: IEEE Access. 2022 ; Bind 10. s. 111704-111724.

Bibtex

@article{fc8f25921c4e49819e2c2599f05800d9,
title = "ARiana: Augmented Reality Based In-Situ Annotation of Assembly Videos",
abstract = "Annotated videos are commonly produced for documenting assembly and maintenance processes in the manufacturing industry. However, according to a semi-structured interview we conducted with industrial experts, the current process of creating annotated assembly videos, in which the annotator annotates the video capturing the expert's demonstration of assembly and maintenance process, is cumbersome and time-consuming. The key challenges include three key problems in annotation: (1) unnecessary extra communications between field workers and annotators, (2) lack of suitable camera gear, and (3) wasting time in the manual removal of non-informative portions of captured videos. Because annotation always follows video capture, the problem 1 remains out of scope for state-of-the-art video annotation tools. And making the assumption of a perfect captured video, which covers no occlusion and contains only relevant assembly or maintenance information, causes problem 2 and 3. As a result, we have developed ARiana, a wearable augmented reality-based in-situ video annotation tool that guides field experts to create annotations efficiently while conducting the assembly or maintenance tasks. ARiana has three key features that include context-awareness enabled by hand-object interaction, multimodal interaction for annotation on the fly, and real-time audiovisual guidance enabled by edge offloading. We have implemented ARiana on Android-based smart glasses, equipped with first-person camera and microphone. In a usability test based on attempting to assemble a toy model and to annotate the recorded video simultaneously, ARiana demonstrated higher efficiency and effectiveness compared to one of the state-of-the-art video annotation tools, in which the assembling process is followed by the annotation process. In particular, ARiana helps users finish annotation tasks four times faster, and increase the annotation accuracy by 23%. ",
keywords = "Augmented reality, first-person videos, multimodal interaction, process documentation, video annotation, workflow extraction",
author = "Pham, {Truong An} and Tim Moesgen and Sanni Siltanen and Joanna Bergstrom and Yu Xiao",
note = "Publisher Copyright: {\textcopyright} 2013 IEEE.",
year = "2022",
doi = "10.1109/ACCESS.2022.3216015",
language = "English",
volume = "10",
pages = "111704--111724",
journal = "IEEE Access",
issn = "2169-3536",
publisher = "Institute of Electrical and Electronics Engineers Inc.",

}

RIS

TY - JOUR

T1 - ARiana

T2 - Augmented Reality Based In-Situ Annotation of Assembly Videos

AU - Pham, Truong An

AU - Moesgen, Tim

AU - Siltanen, Sanni

AU - Bergstrom, Joanna

AU - Xiao, Yu

N1 - Publisher Copyright: © 2013 IEEE.

PY - 2022

Y1 - 2022

N2 - Annotated videos are commonly produced for documenting assembly and maintenance processes in the manufacturing industry. However, according to a semi-structured interview we conducted with industrial experts, the current process of creating annotated assembly videos, in which the annotator annotates the video capturing the expert's demonstration of assembly and maintenance process, is cumbersome and time-consuming. The key challenges include three key problems in annotation: (1) unnecessary extra communications between field workers and annotators, (2) lack of suitable camera gear, and (3) wasting time in the manual removal of non-informative portions of captured videos. Because annotation always follows video capture, the problem 1 remains out of scope for state-of-the-art video annotation tools. And making the assumption of a perfect captured video, which covers no occlusion and contains only relevant assembly or maintenance information, causes problem 2 and 3. As a result, we have developed ARiana, a wearable augmented reality-based in-situ video annotation tool that guides field experts to create annotations efficiently while conducting the assembly or maintenance tasks. ARiana has three key features that include context-awareness enabled by hand-object interaction, multimodal interaction for annotation on the fly, and real-time audiovisual guidance enabled by edge offloading. We have implemented ARiana on Android-based smart glasses, equipped with first-person camera and microphone. In a usability test based on attempting to assemble a toy model and to annotate the recorded video simultaneously, ARiana demonstrated higher efficiency and effectiveness compared to one of the state-of-the-art video annotation tools, in which the assembling process is followed by the annotation process. In particular, ARiana helps users finish annotation tasks four times faster, and increase the annotation accuracy by 23%.

AB - Annotated videos are commonly produced for documenting assembly and maintenance processes in the manufacturing industry. However, according to a semi-structured interview we conducted with industrial experts, the current process of creating annotated assembly videos, in which the annotator annotates the video capturing the expert's demonstration of assembly and maintenance process, is cumbersome and time-consuming. The key challenges include three key problems in annotation: (1) unnecessary extra communications between field workers and annotators, (2) lack of suitable camera gear, and (3) wasting time in the manual removal of non-informative portions of captured videos. Because annotation always follows video capture, the problem 1 remains out of scope for state-of-the-art video annotation tools. And making the assumption of a perfect captured video, which covers no occlusion and contains only relevant assembly or maintenance information, causes problem 2 and 3. As a result, we have developed ARiana, a wearable augmented reality-based in-situ video annotation tool that guides field experts to create annotations efficiently while conducting the assembly or maintenance tasks. ARiana has three key features that include context-awareness enabled by hand-object interaction, multimodal interaction for annotation on the fly, and real-time audiovisual guidance enabled by edge offloading. We have implemented ARiana on Android-based smart glasses, equipped with first-person camera and microphone. In a usability test based on attempting to assemble a toy model and to annotate the recorded video simultaneously, ARiana demonstrated higher efficiency and effectiveness compared to one of the state-of-the-art video annotation tools, in which the assembling process is followed by the annotation process. In particular, ARiana helps users finish annotation tasks four times faster, and increase the annotation accuracy by 23%.

KW - Augmented reality

KW - first-person videos

KW - multimodal interaction

KW - process documentation

KW - video annotation

KW - workflow extraction

UR - http://www.scopus.com/inward/record.url?scp=85140800440&partnerID=8YFLogxK

U2 - 10.1109/ACCESS.2022.3216015

DO - 10.1109/ACCESS.2022.3216015

M3 - Journal article

AN - SCOPUS:85140800440

VL - 10

SP - 111704

EP - 111724

JO - IEEE Access

JF - IEEE Access

SN - 2169-3536

ER -

ID: 326677043