Modified Image Thresholding using Social Impact Theory based Optimization (SITO)
نویسندگان
چکیده
Thresholding is considered as pivotal tool for image segmentation [1]. The main aim of thresholding is to divide the pixels into different groups in a logical way [2]. One of the most suitable algorithm for thresholding is Social Impact Theory Based Optimization (SITO).Social Impact theory optimization algorithm has been considered as one of the important technique to find the better optimized results as it is based on human behavior . The cross entropy function works well in case of bi-level thresholding problem. However, if there is a need of the multi-thresholding in image processing application, a global and generic objective function is desired so that each threshold could be tested for its best performance statistically [6]. The maxima of the selected threshold are optimized by using the SITO algorithm based on maxima of sum of entropy ad standard deviation. The results are compared with negative selection algorithm (NSA) which is artificial intelligence (AI) technique, maximum entropy algorithm and OTSU algorithm. The performance measures i.e. Standard Deviation, Entropy, MSE and PSNR prove the improvements of SITO based thresholding.
منابع مشابه
SITO: Social Impact Theory based Optimizer –Recent Challenges
The Social Impact Theory based Optimizer (SITO) is a novel population-based binary optimization metaheuristic, inspired by computer simulation of Dynamic Theory of Social Impact. Its first version has been developed in 2006. Recently, we can summarize some of most important aspects of SITO, including some ideas for future work.
متن کاملA brief overview of population - based optimization techniques and their applications post 2011
Naturally occurring phenomenon serves as an unbiased guide for solving various optimization problems. This paper compiles some of the population-based, stochastic optimization algorithms including the recently developed social impact theory based optimizer, SITO. The current state of research, including the natural phenomena followed by each and some of their applications to solve various optim...
متن کاملBinary social impact theory based optimization and its applications in pattern recognition
The human opinion formation can be understood as a social approach to optimization. In the real world, the opinions on different issues encode a "candidate solution", which is evaluated by a complex and unknown fitness function. The computer models of such processes can be easily modified by introducing a fitness value, which leads to novel family of optimization techniques. This paper demonstr...
متن کاملA comparative performance of gray level image thresholding using normalized graph cut based standard S membership function
In this research paper, we use a normalized graph cut measure as a thresholding principle to separate an object from the background based on the standard S membership function. The implementation of the proposed algorithm known as fuzzy normalized graph cut method. This proposed algorithm compared with the fuzzy entropy method [25], Kittler [11], Rosin [21], Sauvola [23] and Wolf [33] method. M...
متن کاملRobust Potato Color Image Segmentation using Adaptive Fuzzy Inference System
Potato image segmentation is an important part of image-based potato defect detection. This paper presents a robust potato color image segmentation through a combination of a fuzzy rule based system, an image thresholding based on Genetic Algorithm (GA) optimization and morphological operators. The proposed potato color image segmentation is robust against variation of background, distance and ...
متن کامل