Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

A Study on Darwinian Crow Search Algorithm for Multilevel Thresholding

View through CrossRef
Multilevel thresholding is a basic method in image segmentation. The conventional image multilevel thresholding algorithms are computationally expensive when the number of decomposed segments is high. In this paper, a novel and powerful technique is suggested for Crow Search Algorithm (CSA) devoted to segmentation applications. The main contribution of our work is to adapt Darwinian evolutionary theory with heuristic CSA. First, the population is divided into specified groups and each group tries to find better location in the search space. A policy of encouragement and punishment is set on searching agents to avoid being trapped in the local optimum and premature solutions. Moreover, to increase the convergence rate of the proposed method, a gray-scale map is applied to out-boundary agents. Ten test images are selected to measure the ability of our algorithm, compared with the famous procedure, energy curve method. Two popular entropies i.e. Otsu and Kapur are employed to evaluate the capability of the introduced algorithm. Eight different search algorithms are implemented and compared to the introduced method. The obtained results show that our method, compared with the original CSA, and other heuristic search methods, can extract multi-level thresholding more efficiently.
Title: A Study on Darwinian Crow Search Algorithm for Multilevel Thresholding
Description:
Multilevel thresholding is a basic method in image segmentation.
The conventional image multilevel thresholding algorithms are computationally expensive when the number of decomposed segments is high.
In this paper, a novel and powerful technique is suggested for Crow Search Algorithm (CSA) devoted to segmentation applications.
The main contribution of our work is to adapt Darwinian evolutionary theory with heuristic CSA.
First, the population is divided into specified groups and each group tries to find better location in the search space.
A policy of encouragement and punishment is set on searching agents to avoid being trapped in the local optimum and premature solutions.
Moreover, to increase the convergence rate of the proposed method, a gray-scale map is applied to out-boundary agents.
Ten test images are selected to measure the ability of our algorithm, compared with the famous procedure, energy curve method.
Two popular entropies i.
e.
Otsu and Kapur are employed to evaluate the capability of the introduced algorithm.
Eight different search algorithms are implemented and compared to the introduced method.
The obtained results show that our method, compared with the original CSA, and other heuristic search methods, can extract multi-level thresholding more efficiently.

Related Results

A Darwinian Differential Evolution Algorithm for Multilevel Image Thresholding
A Darwinian Differential Evolution Algorithm for Multilevel Image Thresholding
Image segmentation is a prime operation to understand the content of images. Multilevel thresholding is applied in image segmentation because of its speed and accuracy. In this pap...
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Abstract The Physical Activity Guidelines for Americans (Guidelines) advises older adults to be as active as possible. Yet, despite the well documented benefits of physical a...
Black as the Crow
Black as the Crow
Perched among the many birds in the Parliament of Foules sits “the crowe with vois of care” (364).1 The crow receives no space to speak in Geoffrey Chaucer’s Valentine’s ...
Battle royale optimizer for multi-level image thresholding
Battle royale optimizer for multi-level image thresholding
Abstract Segmentation is an essential step of image processing that directly affects its success. Among the methods used for image segmentation, histogram-based thresholdin...
Multilevel Analysis of Determinants of Cattle deaths in Ethiopia
Multilevel Analysis of Determinants of Cattle deaths in Ethiopia
Abstract Background The Ethiopian economy is highly dependent on agriculture. Despite being more subsistence, agricultural production plays an important role in the econom...
Colour Image Multilevel Thresholding Segmentation Using Trees Social Relationship Algorithm
Colour Image Multilevel Thresholding Segmentation Using Trees Social Relationship Algorithm
Abstract Colour image segmentation is an essential task in image processing and computer vision that aims to divide an image into meaningful and homogeneous regions. One of...
ERROR ESTIMATION FOR A PIEZOELECTRIC CONTACT PROBLEM WITH WEAR AND LONG MEMORY
ERROR ESTIMATION FOR A PIEZOELECTRIC CONTACT PROBLEM WITH WEAR AND LONG MEMORY
We study a mathematical model for a quasistatic behavior of electro-viscoelastic materials. The problem is related to highly nonlinear and non-smooth phenomena like contact, fricti...
Classification Performance of Thresholding Methods in the Mahalanobis–Taguchi System
Classification Performance of Thresholding Methods in the Mahalanobis–Taguchi System
The Mahalanobis–Taguchi System (MTS) is a pattern recognition tool employing Mahalanobis Distance (MD) and Taguchi Robust Engineering philosophy to explore and exploit data in mult...

Back to Top