A New Feedback-Based Method for Parameter Adaptation in Image Processing Routines

PLoS One. 2016 Oct 20;11(10):e0165180. doi: 10.1371/journal.pone.0165180. eCollection 2016.

Abstract

The parametrization of automatic image processing routines is time-consuming if a lot of image processing parameters are involved. An expert can tune parameters sequentially to get desired results. This may not be productive for applications with difficult image analysis tasks, e.g. when high noise and shading levels in an image are present or images vary in their characteristics due to different acquisition conditions. Parameters are required to be tuned simultaneously. We propose a framework to improve standard image segmentation methods by using feedback-based automatic parameter adaptation. Moreover, we compare algorithms by implementing them in a feedforward fashion and then adapting their parameters. This comparison is proposed to be evaluated by a benchmark data set that contains challenging image distortions in an increasing fashion. This promptly enables us to compare different standard image segmentation algorithms in a feedback vs. feedforward implementation by evaluating their segmentation quality and robustness. We also propose an efficient way of performing automatic image analysis when only abstract ground truth is present. Such a framework evaluates robustness of different image processing pipelines using a graded data set. This is useful for both end-users and experts.

MeSH terms

  • Algorithms
  • Artifacts
  • Benchmarking
  • Image Processing, Computer-Assisted*

Grants and funding

The first author has received funding from German Academic Exchange Service (DAAD: https://www.daad.de/de/). The role of DAAD is to provide research opportunities for international students in Germany. The authors also acknowledge BioInterfaces International Graduate School (BIF-IGS) in KIT and Helmholtz Association for supporting this research work.