Sensors (Jan 2022)

Artificial Intelligence-Based Assistance System for Visual Inspection of X-ray Scatter Grids

  • Andreas Selmaier,
  • David Kunz,
  • Dominik Kisskalt,
  • Mohamed Benaziz,
  • Jens Fürst,
  • Jörg Franke

DOI
https://doi.org/10.3390/s22030811
Journal volume & issue
Vol. 22, no. 3
p. 811

Abstract

Read online

Convolutional neural network (CNN)-based approaches have recently led to major performance steps in visual recognition tasks. However, only a few industrial applications are described in the literature. In this paper, an object detection application for visual quality evaluation of X-ray scatter grids is described and evaluated. To detect the small defects on the 4K input images, a sliding window approach is chosen. A special characteristic of the selected approach is the aggregation of overlapping prediction results by applying a 2D scalar field. The final system is able to detect 90% of the relevant defects, taking a precision score of 25% into account. A practical examination of the effectiveness elaborates the potential of the approach, improving the detection results of the inspection process by over 13%.

Keywords