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Industrial Defect Detection Through Computer Vision: A Survey

Yunjie Tang, Kai Sun, Danhuai Zhao, Yan Lü, Jiaju Jiang, Hong Chen

202214 citationsDOI

Abstract

To ensure the quality of products, it is crucial to inspect and assess their condition in quality control. Among all of the methods, surface inspection is a critical step to identify defective products. With the recent advancement in artificial intelligence and computer vision, a plethora of industries are expecting next level automation. The investments in automated defect detection systems are gaining popularity today as they not only reduce labor costs but also improve the consistency of the production line. This review paper presents some examples of defects in the first part. Then some basic but extensive introduction about industrial camera selection, lens selection, optical illumination are included. Since the images collected from factories are not always satisfying, common methods for image data processing are systematically discussed. Then, this survey comprehensively investigates two neural network algorithms vastly used in industrial object detection systems.

Topics & Concepts

AutomationComputer scienceConsistency (knowledge bases)PopularityQuality (philosophy)Selection (genetic algorithm)Artificial intelligenceArtificial neural networkObject detectionObject (grammar)Machine visionImage processingComputer visionEngineeringPattern recognition (psychology)Image (mathematics)PsychologyPhilosophyMechanical engineeringSocial psychologyEpistemologyIndustrial Vision Systems and Defect DetectionImage and Object Detection TechniquesImage Processing Techniques and Applications
Industrial Defect Detection Through Computer Vision: A Survey | Litcius