Optimization of Computational Resources for Real-Time Product Quality Assessment Using Deep Learning and Multiple High Frame Rate Camera Sensors

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Adi Wibowo, J. Setiawan, H. Afrisal, Anak Agung Sagung Manik Mahachandra Jayanti Mertha, S. Santosa, Kuncoro Wisnu, Ambar Mardiyoto, Henri Nurrakhman, Boyi Kartiwa, W. Caesarendra
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引用次数: 1

Abstract

Human eyes generally perform product defect inspection in Indonesian industrial production lines; resulting in low efficiency and a high margin of error due to eye tiredness. Automated quality assessment systems for mass production can utilize deep learning connected to cameras for more efficient defect detection. However, employing deep learning on multiple high frame rate cameras (HFRC) causes the need for much computation and decreases deep learning performance, especially in the real-time inspection of moving objects. This paper proposes optimizing computational resources for real-time product quality assessment on moving cylindrical shell objects using deep learning with multiple HFRC Sensors. Two application frameworks embedded with several deep learning models were compared and tested to produce robust and powerful applications to assess the quality of production results on rotating objects. Based on the experiment results using three HFRC Sensors, a web-based application with tensorflow.js framework outperformed desktop applications in computation. Moreover, MobileNet v1 delivers the highest performance compared to other models. This result reveals an opportunity for a web-based application as a lightweight framework for quality assessment using multiple HFRC and deep learning.
使用深度学习和多个高帧率相机传感器优化实时产品质量评估的计算资源
人眼通常在印尼工业生产线上进行产品缺陷检查;导致低效率和由于眼睛疲劳引起的高误差幅度。用于大规模生产的自动化质量评估系统可以利用连接到相机的深度学习来实现更高效的缺陷检测。然而,在多个高帧率相机(HFRC)上使用深度学习导致需要大量计算,并降低了深度学习性能,尤其是在运动物体的实时检测中。本文提出使用多个HFRC传感器的深度学习来优化计算资源,以便对移动圆柱壳物体进行实时产品质量评估。对嵌入了几个深度学习模型的两个应用程序框架进行了比较和测试,以生成健壮而强大的应用程序,从而评估旋转对象的生成结果的质量。基于使用三个HFRC传感器的实验结果,基于tensorflow.js框架的网络应用程序在计算方面优于桌面应用程序。此外,与其他型号相比,MobileNetv1提供了最高的性能。这一结果为基于web的应用程序提供了一个机会,它可以作为使用多种HFRC和深度学习进行质量评估的轻量级框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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