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Automated Surface Defect Detection in Machined Parts Using Deep Learning Techniques and Machine Vision

Akbar AbrorovBukhara Engineering Technological InstituteMusurmon JuraevAlmalik Filial of Tashkent State Technical UniversityKhodjayeva NodiraTermez State UniversityErkinbay IsmailovUrgench State University
ABI

Аннотация

This paper presents an overview of advanced deep learning techniques and machine vision technologies aimed at automating defect recognition tasks with unparalleled accuracy and efficiency. Various methodologies, including deep random chains combined with adaptive Faster R-CNN, Gradient-weighted Flaw Detecting using Convolutional Neural Networks (CNNs), and established architectures like Faster R-CNN and YOLOv5, are discussed. These methods leverage CNNs’ robustness in image classification tasks and feature extraction capabilities to improve defect detection accuracy on machined components. Furthermore, the integration of machine vision with optical inspection platforms enables rapid defect recognition, classification, and localization, significantly enhancing the overall quality control process in manufacturing environments. Visualizations of defect recognition scores and improvements in accuracy demonstrate the effectiveness of these methodologies, highlighting their potential to drive efficiency and competitiveness in the manufacturing industry. Overall, the continuous evolution and integration of these technologies offer immense potential for transforming quality control practices and driving excellence in defect detection in machined parts.

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