CNN-based ResNet-101 : a high-accuracy quality control inspection approach for industrial applications in liquid spreading on skin-mimic substrates
Othman, Uqba and Ait Ameur, Mohamed Adlan and Yang, Erfu and Torres, Ophelie; Dahal, Keshav and Pervez, Zeeshan and Gilardi, Marco, eds. (2025) CNN-based ResNet-101 : a high-accuracy quality control inspection approach for industrial applications in liquid spreading on skin-mimic substrates. In: 2025 International Conference on Software, Knowledge, Information Management & Applications (SKIMA). IEEE, GBR. ISBN 9781665457347 (https://doi.org/10.1109/SKIMA66621.2025.11155456)
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Abstract
Ensuring uniformity in liquid spreading on skin mimic substrate materials is crucial in quality control for automated industrial processes. This paper proposes a CNN-based method for visual inspection of liquid spreading on skin mimic substrate. In this approach, ResNet-101 is used to boost the performance of a designed liquid spreading system that integrates a machine vision subsystem and an UR10e robotic arm for spreading scanning and images capturing under different lighting conditions. Spreading is categorized into three classes: empty spread, full spread, and fault spread. A novel dataset is generated when the camera is assigned to capture images for training, validation and then testing purposes. The trained network effectively classifies the spreading status. Experimental results demonstrate that the ResNet-101 scheme achieved a training accuracy of 97.99%, outperforming classical machine learning and deep learning models by comparing accuracy and real testing of unseen samples. Real testing results proved that the system’s performance is enhanced with ResNet-101, which provides a promising novel quality control solution for automated coating and painting inspection task under complex industrial conditions and requirements.
ORCID iDs
Othman, Uqba, Ait Ameur, Mohamed Adlan
ORCID: https://orcid.org/0009-0005-1320-0380, Yang, Erfu
ORCID: https://orcid.org/0000-0003-1813-5950 and Torres, Ophelie;
Dahal, Keshav, Pervez, Zeeshan and Gilardi, Marco
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Item type: Book Section ID code: 94240 Dates: DateEvent16 September 2025Published16 April 2025AcceptedSubjects: Technology > Manufactures Department: Faculty of Engineering > Design, Manufacture and Engineering Management Depositing user: Pure Administrator Date deposited: 19 Sep 2025 16:11 Last modified: 30 Apr 2026 00:23 Related URLs: URI: https://strathprints.strath.ac.uk/id/eprint/94240
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