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An Explainable Laser Welding Defect Recognition Method Based on Multi-Scale Class Activation Mapping

Tianyuan Liu, Hangbin Zheng, Jinsong Bao, Pai Zheng, Junliang Wang, Changqi Yang, Jun Gu

2022IEEE Transactions on Instrumentation and Measurement13 citationsDOI

Abstract

Vision-based online defect recognition can provide insights for laser welding quality control systems. Although the visual signal contains richer quality information than the one-dimensional signal, the quality features contained in the visual signal are more abstract. To improve the explainability of current convolutional neural networks (CNNs) for laser welding defect recognition (LWDR), a class activation mapping method based on multi-scale fusion features (CAM-MSFF) is proposed. In addition, a multi-scale features adaptive fusion method is proposed with three steps of feature squeeze, feature mapping, and feature recalibrating. In order to facilitate the learning and utilization of multi-scale features by the proposed method, supervisory information is applied to multiple scales. The experimental results show that the proposed CAM-MSFF method has higher accuracy and convergence speed than the conventional model. The results of the explainability tests show that the proposed method can provide a more accurate and human-comprehensible explanation of the model’s decision basis.

Topics & Concepts

Artificial intelligenceComputer scienceFeature (linguistics)WeldingPattern recognition (psychology)SIGNAL (programming language)Feature extractionScale (ratio)Convolutional neural networkArtificial neural networkConvergence (economics)Computer visionEngineeringPhysicsPhilosophyProgramming languageQuantum mechanicsEconomicsLinguisticsMechanical engineeringEconomic growthIndustrial Vision Systems and Defect DetectionWelding Techniques and Residual StressesThermography and Photoacoustic Techniques
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