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YOLO-v5 Variant Selection Algorithm Coupled with Representative Augmentations for Modelling Production-Based Variance in Automated Lightweight Pallet Racking Inspection

Muhammad Hussain

2023Big Data and Cognitive Computing18 citationsDOIOpen Access PDF

Abstract

The aim of this research is to develop an automated pallet inspection architecture with two key objectives: high performance with respect to defect classification and computational efficacy, i.e., lightweight footprint. As automated pallet racking via machine vision is a developing field, the procurement of racking datasets can be a difficult task. Therefore, the first contribution of this study was the proposal of several tailored augmentations that were generated based on modelling production floor conditions/variances within warehouses. Secondly, the variant selection algorithm was proposed, starting with extreme-end analysis and providing a protocol for selecting the optimal architecture with respect to accuracy and computational efficiency. The proposed YOLO-v5n architecture generated the highest [email protected] of 96.8% compared to previous works in the racking domain, with a computational footprint in terms of the number of parameters at its lowest, i.e., 1.9 M compared to YOLO-v5x at 86.7 M.

Topics & Concepts

PalletFootprintComputer scienceSelection (genetic algorithm)ArchitectureAlgorithmTask (project management)Field (mathematics)Variance (accounting)Real-time computingData miningArtificial intelligenceEngineeringSystems engineeringMathematicsStructural engineeringPure mathematicsArtBusinessAccountingPaleontologyBiologyVisual artsIndustrial Vision Systems and Defect DetectionInfrastructure Maintenance and MonitoringImage and Object Detection Techniques