4.8 Article

Hybrid-Learning-Based Operational Visual Quality Inspection for Edge-Computing-Enabled IoT System

Journal

IEEE INTERNET OF THINGS JOURNAL
Volume 9, Issue 7, Pages 4958-4972

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JIOT.2021.3107902

Keywords

Inspection; Edge computing; Manufacturing; Hybrid learning; Welding; Internet of Things; Visualization; Deep learning; edge computing; hybrid learning; Internet of Things (IoT); quality inspection; smart manufacturing

Funding

  1. National Major Research and Development Program of China [2020YFB1807601]
  2. Young Elite Scientists Sponsorship Program by CAST [2018QNRC001]
  3. Innovation Project of Guangdong Educational Department [2019KTSCX147]
  4. National Research Foundation, Singapore
  5. Infocomm Media Development Authority

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This article presents an edge-computing-enabled IoT system based on a hybrid learning method for visual surface quality inspection. The method uses a deep neural network to synthesize global representations of industrial images and applies an unsupervised clustering algorithm for anomaly detection. With a small amount of labeled data and minimum iterative optimization efforts, the method achieves high accuracies and recalls in real-world factories.
Deep learning-enhanced Internet of Things (IoT) plays a pivot role in advancing the transformation toward smart manufacturing, and an essential component in many smart manufacturing IoT systems is the quality inspection. However, challenges, such as expensive data labeling, innumerable types of defects, and high costs for iterative optimization, hinder the industrial applicability of previous visual surface quality inspection methods. In this article, we present an edge-computing-enabled IoT system based on an innovative hybrid learning method for visual surface quality inspection using only few labeled data and minimum iterative optimization efforts. Our hybrid learning method first employs a deep neural network to synthesize global representations of real-world industrial images, which are subsequently analyzed via an unsupervised clustering algorithm for anomaly detection. Besides, enhancement strategies, such as fine-tuning and data augmentation, are proposed to improve the robustness against the noisy data set and support low-cost inference in multiple edge devices for manufacturing operation. On a holdout data set collected from real-world factories, our method achieves classification accuracies between 90% and 98%, outperforming the benchmark method by 7%-12%. Moreover, this hybrid learning method demonstrates the effectiveness in detecting new types of surface defects and achieves test recalls between 86% and 97%, outperforming the benchmark method by 11%-34%.

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