The objective of image segmentation is to extract meaningful objects. A meaningful segmentation selects the proper threshold values to optimize a criterion using entropy. The conventional multilevel thresholding methods are efficient for bi-level thresholding. However, they are computationally expensive when extended to multilevel thresholding since they exhaustively search the optimal thresholds to optimize the objective functions. To overcome this problem, two successful swarm-intelligence-based global optimization algorithms, cuckoo search (CS) algorithm and wind driven optimization (WDO) for multilevel thresholding using Kapur’s entropy has been employed. For this purpose, best solution as fitness function is achieved through CS and W...
Thresholding is a type of image segmentation, where the pixels change to make the image easier to an...
Thresholding is the easiest method for image segmentation. Bi-level thresholding is used to create b...
Image segmentation plays an important role in image processing and computer vision. It is often used...
The research work is to improve the segmentation of the color satellite images. In this proposed met...
Entropy based image thresholding methods are widely adopted for multilevel image segmentation. Bilev...
In remote sensing imagery, segmentation techniques fail to encounter multiple regions of interest du...
[[abstract]]Thresholding is one of the popular and fundamental techniques for conducting image segme...
Abstract — Image Thresholding is one simplest method of image segmentation, which partitions the ima...
Segmentation is a critical task in image processing. Bi-level segmentation involves dividing the who...
To handle the fuzziness and spatial uncertainties among pixels entailed in color images, this paper ...
Segmentation is one of the essential tasks in image processing. Thresholding is one of the simplest ...
International audienceMultilevel thresholding using Otsu or Kapur methods is widely used in the cont...
Image segmentation is an important problem for image processing. The image processing applications a...
Image thresholding is one of the most important approaches for image segmentation. Among multilevel ...
This paper proposes a multi-threshold image segmentation method based on modified salp swarm algorit...
Thresholding is a type of image segmentation, where the pixels change to make the image easier to an...
Thresholding is the easiest method for image segmentation. Bi-level thresholding is used to create b...
Image segmentation plays an important role in image processing and computer vision. It is often used...
The research work is to improve the segmentation of the color satellite images. In this proposed met...
Entropy based image thresholding methods are widely adopted for multilevel image segmentation. Bilev...
In remote sensing imagery, segmentation techniques fail to encounter multiple regions of interest du...
[[abstract]]Thresholding is one of the popular and fundamental techniques for conducting image segme...
Abstract — Image Thresholding is one simplest method of image segmentation, which partitions the ima...
Segmentation is a critical task in image processing. Bi-level segmentation involves dividing the who...
To handle the fuzziness and spatial uncertainties among pixels entailed in color images, this paper ...
Segmentation is one of the essential tasks in image processing. Thresholding is one of the simplest ...
International audienceMultilevel thresholding using Otsu or Kapur methods is widely used in the cont...
Image segmentation is an important problem for image processing. The image processing applications a...
Image thresholding is one of the most important approaches for image segmentation. Among multilevel ...
This paper proposes a multi-threshold image segmentation method based on modified salp swarm algorit...
Thresholding is a type of image segmentation, where the pixels change to make the image easier to an...
Thresholding is the easiest method for image segmentation. Bi-level thresholding is used to create b...
Image segmentation plays an important role in image processing and computer vision. It is often used...