Action Recognition of Excavator with Data Augmentation of Simulator-Generated Training Data

In construction sites, construction machinery such as excavators plays a critical role. The management of such equipment, notably the monitoring of actions conducted by each construction machinery, is, therefore, key to high productivity and efficiency. This time-consuming and laborious task is curr...

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Veröffentlicht in:Journal of the Japan Society for Precision Engineering 2022/02/05, Vol.88(2), pp.162-167
Hauptverfasser: KASAHARA, Jun Younes LOUHI, SIM, Jinhyeok, KOMATSU, Ren, CHIKUSHI, Shota, NAGATANI, Keiji, CHIBA, Takumi, YAMAMOTO, Shingo, CHAYAMA, Kazuhiro, YAMASHITA, Atsushi, ASAMA, Hajime
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container_issue 2
container_start_page 162
container_title Journal of the Japan Society for Precision Engineering
container_volume 88
creator KASAHARA, Jun Younes LOUHI
SIM, Jinhyeok
KOMATSU, Ren
CHIKUSHI, Shota
NAGATANI, Keiji
CHIBA, Takumi
YAMAMOTO, Shingo
CHAYAMA, Kazuhiro
YAMASHITA, Atsushi
ASAMA, Hajime
description In construction sites, construction machinery such as excavators plays a critical role. The management of such equipment, notably the monitoring of actions conducted by each construction machinery, is, therefore, key to high productivity and efficiency. This time-consuming and laborious task is currently conducted manually by humans and thus, its automation is highly sought after. Previous works on this issue have achieved high performance using deep learning-based approaches and cameras. However, the investments needed to obtain the training data critical to such approaches are often prohibitive. Using a simulator to generate the training data appears therefore as an alternative to allow fast and easy gathering of training data. However, models trained using such training data perform poorly on real data. The purpose of this study is therefore to increase the performance of action recognition of construction machinery such as excavators using simulator-generated training data. A data augmentation process using background images gathered from actual construction sites is used to reduce the gap between simulator-generated data and real-world data. Experiments with data collected in an actual construction site showed the effectiveness of the proposed method.
doi_str_mv 10.2493/jjspe.88.162
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source EZB-FREE-00999 freely available EZB journals
subjects action recognition
Activity recognition
automation in construction
computer vision
Construction
Construction equipment
Construction sites
Data augmentation
Excavators
Machine learning
sim2real
Simulation
Training
title Action Recognition of Excavator with Data Augmentation of Simulator-Generated Training Data
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