Enhancing Quality Control in Plastic Injection Production: Deep Learning-Based Detection and Classification of Defects

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Date

2023

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Publisher

IEEE

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No

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Abstract

This study investigates the applicability of diverse deep learning techniques in detecting and classifying defects within plastic injection manufacturing processes. The findings derived from the models yield several feasible solutions that hold potential practical implications. Notably, the implementation of the Xception model as a classification framework presents a potential domain for enhancing quality control procedures. The developed models, trained on the prepared data sets, provide compelling evidence for the potential utilization of artificial intelligence technologies in the manufacturing industry. Consequently, this study represents a noteworthy contribution to the limited yet auspicious academic research in the field.

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Keywords

Error detection, Classification, Quality control, Plastic injection, Deep learning

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Citation

Tunalι, M. M., Sayar, A., Aslan, Y., Mutlu, İ., Şimşek, K., & Çakar, T. (2023, September).Enhancing quality control in plastic injection production: deep learning-based detection and classification of defects. In 2023 8th International Conference on Computer Science and Engineering (UBMK). IEEE. (pp. 498-502).

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Source

2023 8th International Conference on Computer Science and Engineering (UBMK)

Volume

38

Issue

Start Page

498

End Page

502
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285

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23

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