Multilevel image threshold segmentation using an improved Bloch quantum artificial bee colony algorithm
Published 2019 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Multilevel image threshold segmentation using an improved Bloch quantum artificial bee colony algorithm
Authors
Keywords
-
Journal
MULTIMEDIA TOOLS AND APPLICATIONS
Volume -, Issue -, Pages -
Publisher
Springer Science and Business Media LLC
Online
2019-11-22
DOI
10.1007/s11042-019-08231-7
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- An artificial bee algorithm with a leading group and its application into image registration
- (2019) Haidong Hu et al. MULTIMEDIA TOOLS AND APPLICATIONS
- Adaptive quantum genetic algorithm for task sequence planning of complex assembly systems
- (2018) Linbin Zhang et al. ELECTRONICS LETTERS
- A Hybrid Harmony search and Simulated Annealing algorithm for continuous optimization
- (2018) Assif Assad et al. INFORMATION SCIENCES
- Joint medical image fusion, denoising and enhancement via discriminative low-rank sparse dictionaries learning
- (2018) Huafeng Li et al. PATTERN RECOGNITION
- Hypergraph p-Laplacian Regularization for Remotely Sensed Image Recognition
- (2018) Xueqi Ma et al. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING
- A Pareto improved artificial fish swarm algorithm for solving a multi-objective fuzzy disassembly line balancing problem
- (2017) Zeqiang Zhang et al. EXPERT SYSTEMS WITH APPLICATIONS
- Convergent heterogeneous particle swarm optimisation algorithm for multilevel image thresholding segmentation
- (2017) Mohammad Hamed Mozaffari et al. IET Image Processing
- Handcrafted vs. non-handcrafted features for computer vision classification
- (2017) Loris Nanni et al. PATTERN RECOGNITION
- Genetic Algorithm Based Demand Side Management for Smart Grid
- (2017) C. Bharathi et al. WIRELESS PERSONAL COMMUNICATIONS
- A novel artificial bee colony algorithm with depth-first search framework and elite-guided search equation
- (2016) Laizhong Cui et al. INFORMATION SCIENCES
- Side scan sonar image segmentation based on neutrosophic set and quantum-behaved particle swarm optimization algorithm
- (2016) Jianhu Zhao et al. MARINE GEOPHYSICAL RESEARCH
- Incorporating priors for medical image segmentation using a genetic algorithm
- (2016) Payel Ghosh et al. NEUROCOMPUTING
- Fuzzy-based artificial bee colony optimization for gray image segmentation
- (2016) Ankita Bose et al. Signal Image and Video Processing
- Color image segmentation based on multiobjective artificial bee colony optimization
- (2015) Tahir Sağ et al. APPLIED SOFT COMPUTING
- Adaptive double chain quantum genetic algorithm for constrained optimization problems
- (2015) Haipeng Kong et al. Chinese Journal of Aeronautics
- A new quantum inspired chaotic artificial bee colony algorithm for optimal power flow problem
- (2015) Xiaohui Yuan et al. ENERGY CONVERSION AND MANAGEMENT
- Modified artificial bee colony based computationally efficient multilevel thresholding for satellite image segmentation using Kapur’s, Otsu and Tsallis functions
- (2015) A.K. Bhandari et al. EXPERT SYSTEMS WITH APPLICATIONS
- Exploring the use of transformation group priors and the method of maximum relative entropy for Bayesian glaciological inversions
- (2015) Robert J. Arthern JOURNAL OF GLACIOLOGY
- Classification of Medical Datasets Using SVMs with Hybrid Evolutionary Algorithms Based on Endocrine-Based Particle Swarm Optimization and Artificial Bee Colony Algorithms
- (2015) Kuan-Cheng Lin et al. JOURNAL OF MEDICAL SYSTEMS
- Representative Discovery of Structure Cues for Weakly-Supervised Image Segmentation
- (2014) Luming Zhang et al. IEEE TRANSACTIONS ON MULTIMEDIA
- Color image segmentation: a novel spatial fuzzy genetic algorithm
- (2012) Ahmad Khan et al. Signal Image and Video Processing
Discover Peeref hubs
Discuss science. Find collaborators. Network.
Join a conversationBecome a Peeref-certified reviewer
The Peeref Institute provides free reviewer training that teaches the core competencies of the academic peer review process.
Get Started