| Authors | سید جلال الدین موسوی راد,حسین ابراهیم پور کومله,Gerald Schaefer |
| Journal | Applied Soft Computing |
| Page number | 209 |
| Volume number | 78 |
| IF | ثبت نشده |
| Paper Type | Full Paper |
| Published At | 2019-02-28 |
| Journal Grade | Scientific - research |
| Journal Type | Electronic |
| Journal Country | Iran, Islamic Republic Of |
| Journal Index | SCOPUS ,ISI-Listed |
Abstract
techniques is based on clustering principles, where association of image pixels is based on a similarity
criterion. Conventional clustering algorithms, such as k-means, can be used for this purpose but have
several drawbacks including dependence on initialisation conditions and a higher likelihood of converging
to local rather than global optima.
In this paper, we propose a clustering-based image segmentation method that is based on the human
mental search (HMS) algorithm. HMS is a recent metaheuristic algorithm based on the manner of
searching in the space of online auctions. In HMS, each candidate solution is called a bid, and the algorithm
comprises three major stages: mental search, which explores the vicinity of a solution using Levy flight
to find better solutions; grouping which places a set of candidate solutions into a group using a clustering
algorithm; and moving bids toward promising solution areas. In our image clustering application, bids
encode the cluster centres and we evaluate three different objective functions.
In an extensive set of experiments, we compare the efficacy of our proposed approach with several
state-of-the-art metaheuristic algorithms including a genetic algorithm, differential evolution, particle
swarm optimisation, artificial bee colony algorithm, and harmony search. We assess the techniques based
on a variety of metrics including the objective functions, a cluster validity index, as well as unsupervised
and supervised image segmentation criteria. Moreover, we perform some tests in higher dimensions, and
conduct a statistical analysis to compare our proposed method to its competitors. The obtained results
clearly show that the proposed algorithm represents a highly effective approach to image clustering that
outperforms other state-of-the-art techniques.