4.7 Article

Automatic Identification of Multi-Type Weld Seam Based on Vision Sensor With Silhouette-Mapping

期刊

IEEE SENSORS JOURNAL
卷 21, 期 4, 页码 5402-5412

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSEN.2020.3034382

关键词

Welding; Spot welding; Robots; Vision sensors; Feature extraction; Service robots; Lasers; Silhouette mapping; weld seam identifications; vision sensor; bidirectional deviation search; convolutional neural network

资金

  1. Special Plan of Major Scientific Instruments and Equipment of the State [2018YFF01013101]
  2. Shenzhen Polytechnic Fund [6019310001 K]
  3. Project Key Technology Research and Demonstration Line Construction of Advanced Laser Intelligent Manufacturing Equipment from Shanghai Lingang Area Development Administration

向作者/读者索取更多资源

This study uses silhouette-mapping as an intermediary for weld seam identification and introduces a multi-type weld seam automatic identification system based on vision sensor, showing improved accuracy and robustness in weld seam identification.
Automatic identification of weld seam types by welding robot is a key link in intelligent welding as some adjustment scheme (e.g., welding trajectory planning, initial welding position, welding parameters) vary with the weld seam types. However, the variable welding environment and various weld seam profile omnifarious affect the robustness of weld seam types identification. To overcome the challenges derived from the weld seam diversity, in this paper, the silhouette-mapping was selected as the weld seam intermedium and a multi-type weld seam automatic identification system based on vision sensor was introduced. Two different laser sources were adopted to obtain robust silhouette-mapping features in proper gestures. Based on the silhouette-mapping data (stripe-mapping and spot-mapping), the related image processing algorithms were carried out to achieve automatic identification. Specifically, the bidirectional deviation search method was proposed to locate the spot-mapping area based on the stripe-mapping image. Aiming at the characteristics of the spot-mapping image, a carefully designed CNN (convolutional neural network) model was used to classify types. Experimental results prove that the silhouette-mapping and CNN are an effective combination for the multi-type weld seam identification, and a total of 97.6% of weld seam types were correctly predicted. Some weld-related studies include welding features extraction, and welding quality detection may improve its accuracy on the basis of determining weld seam types.

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