BJEnrik/deep-learning-proactive-quality-control
This project aims to develop an innovative anomaly detection system using advanced data mining and deep learning techniques to accurately identify and localize defects in manufacturing components, thereby enhancing quality control processes and reducing production losses.
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Aug 22, 2023
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