Login / Signup

Nature-inspired optimization algorithms and their significance in multi-thresholding image segmentation: an inclusive review.

Rebika RaiArunita DasKrishna Gopal Dhal
Published in: Evolving systems (2022)
Multilevel Thresholding (MLT) is considered as a significant and imperative research field in image segmentation that can efficiently resolve difficulties aroused while analyzing the segmented regions of multifaceted images with complicated nonlinear conditions. MLT being a simple exponential combinatorial optimization problem is commonly phrased by means of a sophisticated objective function requirement that can only be addressed by nondeterministic approaches. Consequently, researchers are engaging Nature-Inspired Optimization Algorithms (NIOA) as an alternate methodology that can be widely employed for resolving problems related to MLT. This paper delivers an acquainted review related to novel NIOA shaped lately in last three years (2019-2021) highlighting and exploring the major challenges encountered during the development of image multi-thresholding models based on NIOA.
Keyphrases
  • deep learning
  • convolutional neural network
  • machine learning
  • mental health
  • optical coherence tomography