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Machining surface roughness detection by adaptive deep fusion capsule network with low illumination and noise robustness

Zhiwen Huang, Qiang Zhang, Jiajie Shao, Weidong Li, Jianmin Zhu, Dianjun Fang

2023Measurement Science and Technology13 citationsDOIOpen Access PDF

Abstract

Abstract Surface roughness measurement is of great importance for monitoring machining quality. To address the performance degradation of deep models caused by low illumination and ambient noise, this study proposes a non-contact surface roughness detection method based on an adaptive deep fusion capsule network (ADFCNet) model. Firstly, principal competent analysis-based color image enhancement is employed to augment initial surface images collected from normal illumination. Then, consisting of a deep multi-model fusion for high-level feature representation and a capsule classifier for roughness recognition, the ADFCNet model is designed to detect roughness grades by using workpiece surface images. The key hyperparameters of the model are automatically determined by a genetic algorithm. Finally, laboratory and factory experiments under low illumination are carried out to validate the effectiveness and superiority of the proposed method. Experimental results demonstrate that the proposed method has strong low-illumination and noise robustness and generalization capability, indicating a better application prospect in actual scenarios.

Topics & Concepts

Robustness (evolution)MachiningComputer scienceArtificial intelligenceSurface roughnessFusionComputer visionSurface finishPattern recognition (psychology)Materials scienceLinguisticsBiochemistryGeneMetallurgyChemistryComposite materialPhilosophySurface Roughness and Optical MeasurementsIndustrial Vision Systems and Defect DetectionAdvanced machining processes and optimization
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