Abstract

In order to meet the requirements of the accuracy and real-time performance during the working process of underwater welding robots, a scheme of welding seam recognition robots system based on the edge computing is proposed in this paper. A number of pre-processing methods for capturing welding seam image were designed, including Thresholding, Filtering and Edge Detect. A Convolutional Neural Network(CNN) model for welding seam recognition was also created. In the experiments, the image pre-processing and CNN algorithms were integrated in and deployed to the robots, and the learning and training algorithms of the CNN were deployed to the cloud servers. The image pre-processing methods filtered the interference in underwater operations and achieved the image compression and feature extraction. The cloud servers fulfilled the training and parameter optimization of the CNN, which improved the accuracy of welding seam image recognition.

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