In-situ quality inspection system of injection parts based on transfer learning
Robotic Intelligence and Automation
ISSN: 2754-6969
Article publication date: 13 February 2024
Issue publication date: 29 March 2024
Abstract
Purpose
This paper aims to realize an in-situ quality inspection system rapidly for new injection molding (IM) tasks via transfer learning (TL) approach and automation technology.
Design/methodology/approach
The proposed in-situ quality inspection system consists of an injection machine, USB camera, programmable logic controller and personal computer, interconnected via OPC or USB communication interfaces. This configuration enables seamless automation of the IM process, real-time quality inspection and automated decision-making. In addition, a MobileNet-based deep learning (DL) model is proposed for quality inspection of injection parts, fine-tuned using the TL approach.
Findings
Using the TL approach, the MobileNet-based DL model demonstrates exceptional performance, achieving validation accuracy of 99.1% with the utilization of merely 50 images per category. Its detection speed and accuracy surpass those of DenseNet121-based, VGG16-based, ResNet50-based and Xception-based convolutional neural networks. Further evaluation using a random data set of 120 images, as assessed through the confusion matrix, attests to an accuracy rate of 96.67%.
Originality/value
The proposed MobileNet-based DL model achieves higher accuracy with less resource consumption using the TL approach. It is integrated with automation technologies to build the in-situ quality inspection system of injection parts, which improves the cost-efficiency by facilitating the acquisition and labeling of task-specific images, enabling automatic defect detection and decision-making online, thus holding profound significance for the IM industry and its pursuit of enhanced quality inspection measures.
Keywords
Acknowledgements
This work was supported by Postgraduate Research & Practice Innovation Program of Jiangsu Province [grant numbers KYCX21-2032] and China Scholarship Council [grant numbers 202106790096].
Citation
Yang, W., Shan, S., Jin, M., Liu, Y., Zhang, Y. and Li, D. (2024), "In-situ quality inspection system of injection parts based on transfer learning", Robotic Intelligence and Automation, Vol. 44 No. 1, pp. 152-163. https://doi.org/10.1108/RIA-10-2023-0143
Publisher
:Emerald Publishing Limited
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