AIJ Journal of Technology and Design
Online ISSN : 1881-8188
Print ISSN : 1341-9463
ISSN-L : 1341-9463
Information Systems Technology
MARKER-TRACKING AND DEEP-LEARNING-BASED POSE ESTIMATION FOR AUTOMATIC CRANE WORK
−Study on applying computer vision to construction sites−
Keita KADOTakahiro MOROHASHIYuki HONDAGakuhito HIRASAWA
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2021 Volume 27 Issue 66 Pages 1092-1097

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Abstract

In response to the labor shortages caused by an aging society, many attempts have been made to improve productivity using information technology, such as sensors and automated heavy machinery. Crane work is one of the labor-intensive tasks in construction sites; hence, automation is expected.
This study reports on a computer vision-based application for supporting crane work, specifically item-hoisting work. A pose estimation method is developed using marker-tracking and deep-learning-based global feature-tracking, which calculates position correction data for a crane and manipulation for a gyro instrument that controls the turn of a hoisted item.

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© 2021, Architectural Institute of Japan
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