Deep Learning-Based Defects Detection in Keyhole TIG Welding with Enhanced Vision
Xuan Zhang,
Shengbin Zhao,
Mingdi Wang
Abstract:Keyhole tungsten inert gas (keyhole TIG) welding is renowned for its advanced efficiency, necessitating a real-time defect detection method that integrates deep learning and enhanced vision techniques. This study employs a multi-layer deep neural network trained on an extensive welding image dataset. Neural networks can capture complex nonlinear relationships through multi-layer transformations without manual feature selection. Conversely, the nonlinear modeling ability of support vector machines (SVM) is limi… Show more
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