Automatic visual inspection with neural networks using the example of cardiovascular implants (stents)

Automatic visual inspection with neural networks using the example of cardiovascular implants (stents)

.
.

Environment

"Innovations for tomorrow's production, services and work" aims to improve production in medical technology. improve. The aim of the bachelor/master thesis is to a self-learning process be which automatically detects errors in the braiding pattern of stents stents and, based on this, optimizes the adaptation parameters based on this.

Task

  • Image preprocessing and manipulation (defects in the braiding pattern) of stents
  • Application and parameterization of suitable frameworks or algorithms for image processing
  • Detection of braiding defects by Machine Learning and Deep Learning methods
  • Evaluation and benchmarking investigated algorithms for the detection and classification of Stents

Requirements

  • Programming skills
  • Image processing
  • Machine learning skills