Quantum Behaved Swarm Intelligent Techniques for Image Analysis
- 1 January 2017
- book chapter
- other
- Published by IGI Global
Abstract
In this chapter, an exhaustive survey of quantum behaved techniques on swarm intelligent is presented. The techniques have been categorized into different classes, and in conclusion, a comparison is made according to the benefits of the approaches taken for review. The above-mentioned techniques are classified based on the information they exploit, for instance, neural network related, meta-heuristic and evolutionary algorithm related, and other distinguished approaches are considered. Neural Network-Based Approaches exhibit a few brain-like activities, which are programmatically complicated, for instance, learning, optimization, etc. Meta-Heuristic Approaches update solution generation-wise for optimization, and the approaches differ based on the problem definition.Keywords
This publication has 70 references indexed in Scilit:
- Image thresholding using type II fuzzy setsPattern Recognition, 2005
- Survey over image thresholding techniques and quantitative performance evaluationJournal of Electronic Imaging, 2004
- Quantum artificial neural network architectures and componentsInformation Sciences, 2000
- Fuzzy partition of two-dimensional histogram and its application to thresholdingPattern Recognition, 1999
- Tight Bounds on Quantum SearchingFortschritte der Physik, 1998
- Artificial neural network methods in quantum mechanicsComputer Physics Communications, 1997
- Threshold selection using Renyi's entropyPattern Recognition, 1997
- Minimum cross-entropy threshold selectionPattern Recognition, 1996
- Image thresholding by minimizing the measures of fuzzinessPattern Recognition, 1995
- Thresholding based on histogram approximationIEE Proceedings - Vision, Image, and Signal Processing, 1995