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A Systematic Review of Machine-Vision-Based Leather Surface Defect Inspection

Zhiqiang Chen, Jiehang Deng, Qiuqin Zhu, Hailun Wang, Yi Chen

2022Electronics48 citationsDOIOpen Access PDF

Abstract

Machine-vision-based surface defect inspection is one of the key technologies to realize intelligent manufacturing. This paper provides a systematic review on leather surface defect inspections based on machine vision. Leather products are regarded as the most traded products all over the world. Automatic detection, location, and recognition of leather surface defects are very important for the intelligent manufacturing of leather products, and are challenging but noteworthy tasks. This work investigates a large amount of literature related to leather surface defect inspection. In addition, we also investigate and evaluate the performance of some edge detectors and threshold detectors for leather defect detection, and the identification accuracy of the classical machine learning method SVM for leather surface defect identification. A detailed and methodical review of leather surface defect inspection with image analysis and machine learning is presented. Main challenges and future development trends are discussed for leather surface defect inspection, which can be used as a source of guidelines for designing and developing new solutions in this field.

Topics & Concepts

Machine visionIdentification (biology)Artificial intelligenceEnhanced Data Rates for GSM EvolutionVisual inspectionEngineeringAutomated X-ray inspectionSurface (topology)Support vector machineEngineering drawingComputer scienceMachine learningImage processingMechanical engineeringManufacturing engineeringImage (mathematics)BotanyGeometryBiologyMathematicsIndustrial Vision Systems and Defect DetectionInfrastructure Maintenance and MonitoringWelding Techniques and Residual Stresses
A Systematic Review of Machine-Vision-Based Leather Surface Defect Inspection | Litcius