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

Novel Algorithm for Image Segmentation Using Neural Network


Affiliations
1 Electronic Engineering Department, Bushehr Branch Islamic Azad University, Bushehr, Iran, Islamic Republic of
2 Electrical and Computer Engineering Department, Shahid Beheshti University, Tehran, Iran, Islamic Republic of
     

   Subscribe/Renew Journal


The pulse-coupled neural network (PCNN) is widely used in image segmentation. However, the determination of parameter values in the PCNN framework is an unavoidable and trivial task that may cause neurons to behave unexpectedly, thus affecting segmentation performance. Therefore, this paper presents an efficient iterative algorithm using a modified PCNN for automatic image segmentation. In contrast to existing PCNN models, a new neural threshold was first established for the modified PCNN instead of a general dynamic threshold, allowing for greater efficiency in controlling the pulse output.

Besides, a varying linking coefficient value was constructed for efficiently adjusting the neural behavior. By incorporating the Bayes clustering method, it thereby extends the feasibility of the model for the extraction of targets with inhomogeneous brightness, thus resulting in a simpler iterative algorithm for segmentation. Experiments on real-world infrared images demonstrate the efficiency of our proposed model. Moreover, compared with simplified PCNN models and classic segmentation methods, the proposed model shows fewer misclassification errors and higher segmentation performance.


Keywords

Pulse-Coupled, Neural, Network, Image Segmentation, Neural Threshold, Bayes Clustering Method
Subscription Login to verify subscription
User
Notifications
Font Size


Abstract Views: 323

PDF Views: 0




  • Novel Algorithm for Image Segmentation Using Neural Network

Abstract Views: 323  |  PDF Views: 0

Authors

Sadegh Nezarat
Electronic Engineering Department, Bushehr Branch Islamic Azad University, Bushehr, Iran, Islamic Republic of
Ali Ghareaghaji
Electrical and Computer Engineering Department, Shahid Beheshti University, Tehran, Iran, Islamic Republic of
Hamed Bazyar
Electronic Engineering Department, Bushehr Branch Islamic Azad University, Bushehr, Iran, Islamic Republic of
Seyed Arsalan Hossini
Electronic Engineering Department, Bushehr Branch Islamic Azad University, Bushehr, Iran, Islamic Republic of

Abstract


The pulse-coupled neural network (PCNN) is widely used in image segmentation. However, the determination of parameter values in the PCNN framework is an unavoidable and trivial task that may cause neurons to behave unexpectedly, thus affecting segmentation performance. Therefore, this paper presents an efficient iterative algorithm using a modified PCNN for automatic image segmentation. In contrast to existing PCNN models, a new neural threshold was first established for the modified PCNN instead of a general dynamic threshold, allowing for greater efficiency in controlling the pulse output.

Besides, a varying linking coefficient value was constructed for efficiently adjusting the neural behavior. By incorporating the Bayes clustering method, it thereby extends the feasibility of the model for the extraction of targets with inhomogeneous brightness, thus resulting in a simpler iterative algorithm for segmentation. Experiments on real-world infrared images demonstrate the efficiency of our proposed model. Moreover, compared with simplified PCNN models and classic segmentation methods, the proposed model shows fewer misclassification errors and higher segmentation performance.


Keywords


Pulse-Coupled, Neural, Network, Image Segmentation, Neural Threshold, Bayes Clustering Method