Virtual and Physical Prototyping (Dec 2024)

AM-SegNet for additive manufacturing in situ X-ray image segmentation and feature quantification

  • Wei Li,
  • Rubén Lambert-Garcia,
  • Anna C. M. Getley,
  • Kwan Kim,
  • Shishira Bhagavath,
  • Marta Majkut,
  • Alexander Rack,
  • Peter D. Lee,
  • Chu Lun Alex Leung

DOI
https://doi.org/10.1080/17452759.2024.2325572
Journal volume & issue
Vol. 19, no. 1

Abstract

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ABSTRACTSynchrotron X-ray imaging has been utilised to detect the dynamic behaviour of molten pools during the metal additive manufacturing (AM) process, where a substantial amount of imaging data is generated. Here, we develop an efficient and robust deep learning model, AM-SegNet, for segmenting and quantifying high-resolution X-ray images and prepare a large-scale database consisting of over 10,000 pixel-labelled images for model training and testing. AM-SegNet incorporates a lightweight convolution block and a customised attention mechanism, capable of performing semantic segmentation with high accuracy (∼96%) and processing speed (< 4 ms per frame). The segmentation results can be used for quantification and multi-modal correlation analysis of critical features (e.g. keyholes and pores). Additionally, the application of AM-SegNet to other advanced manufacturing processes is demonstrated. The proposed method will enable end-users in the manufacturing and imaging domains to accelerate data processing from collection to analytics, and provide insights into the processes’ governing physics.

Keywords