Publication detail
Deployment of deep learning-based anomaly detection systems: challenges and solutions
JEŽEK, Š. BURGET, R.
Original Title
Deployment of deep learning-based anomaly detection systems: challenges and solutions
Type
conference paper
Language
English
Original Abstract
Visual anomaly detection systems play an important role in various domains, including surveillance, industrial quality control, and medical imaging. However, the deployment of such systems presents significant challenges due to a wide range of possible scene setups with varying number of devices and high computational requirements of deep learning algorithms. This research paper investigates the challenges encountered during the deployment of visual anomaly detection systems for industrial applications and proposes solutions to address them effectively. We present a model use case scenario from real-world manufacturing quality control and propose an efficient distributed system for deployment of the defect detection methods in manufacturing facilities. The proposed solution aims to provide a general framework for deploying visual defect detection algorithms base on deep neural networks and their high computational requirements. Additionally, the paper addresses challenges related the whole process of automated quality control, which can be performed with varying number of camera devices and it mostly requires interaction with other factory services or workers themselves. We believe the presented framework can contribute to more widespread use of deep learning-based defect detection systems, which may provide valuable feedback for further research and development.
Keywords
deep learning, defect detection, system design, algorithm deployment, image processing, distributed systems
Authors
JEŽEK, Š.; BURGET, R.
Released
23. 4. 2024
Publisher
Brno University of Technology, Faculty of Electronic Engineering and Communication
Location
Brno
ISBN
978-80-214-6230-4
Book
Proceedings II of the 30th Student EEICT 2024: Selected Papers
Edition
1
ISBN
2788-1334
Periodical
Proceedings II of the Conference STUDENT EEICT
State
Czech Republic
Pages from
207
Pages to
211
Pages count
5
URL
BibTex
@inproceedings{BUT189482,
author="Štěpán {Ježek} and Radim {Burget}",
title="Deployment of deep learning-based anomaly detection systems: challenges and solutions",
booktitle="Proceedings II of the 30th Student EEICT 2024: Selected Papers",
year="2024",
series="1",
journal="Proceedings II of the Conference STUDENT EEICT",
pages="207--211",
publisher="Brno University of Technology, Faculty of Electronic Engineering and Communication",
address="Brno",
doi="10.13164/eeict.2024.207",
isbn="978-80-214-6230-4",
issn="2788-1334",
url="https://www.eeict.cz/eeict_download/archiv/sborniky/EEICT_2024_sbornik_2.pdf"
}