Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

A Study on Various Image Segmentation Techniques


Affiliations
1 Department of Computer Science and Applications, Vivekanandha College of Arts and Sciences for Women (Autonomous), Elayampalayam, India
     

   Subscribe/Renew Journal


Image processing means the image can be processed by digital computer. The image segmentation techniques are used to partitioning the image in to several parts for further processing. It is mostly useful for applications like image compression or object recognition, because for these types of applications, it is inefficient to process the whole image. The segmentation is based on pixel intensity values, colors, texture, etc. Various segmentation techniques like edge, threshold, region, clustering and neural network are involved in the effective image analysis. The efficiency of the segmentation process improved with the help of several algorithms, namely, active contour, level set, Fuzzy clustering and K-means clustering.  Segmentation techniques provides the requirement of the suitable enhancement method that supports both intensity and texture based segmentation for better results.


Keywords

Segmentation, Edge Detection, Clustering, Threshold, Region
User
Subscription Login to verify subscription
Notifications
Font Size

Abstract Views: 136

PDF Views: 1




  • A Study on Various Image Segmentation Techniques

Abstract Views: 136  |  PDF Views: 1

Authors

N. Dhivya
Department of Computer Science and Applications, Vivekanandha College of Arts and Sciences for Women (Autonomous), Elayampalayam, India
S. Banupriya
Department of Computer Science and Applications, Vivekanandha College of Arts and Sciences for Women (Autonomous), Elayampalayam, India

Abstract


Image processing means the image can be processed by digital computer. The image segmentation techniques are used to partitioning the image in to several parts for further processing. It is mostly useful for applications like image compression or object recognition, because for these types of applications, it is inefficient to process the whole image. The segmentation is based on pixel intensity values, colors, texture, etc. Various segmentation techniques like edge, threshold, region, clustering and neural network are involved in the effective image analysis. The efficiency of the segmentation process improved with the help of several algorithms, namely, active contour, level set, Fuzzy clustering and K-means clustering.  Segmentation techniques provides the requirement of the suitable enhancement method that supports both intensity and texture based segmentation for better results.


Keywords


Segmentation, Edge Detection, Clustering, Threshold, Region