scholarly journals A New Method of Multi-Focus Image Fusion Using Laplacian Operator and Region Optimization

2018 ◽  
Vol 06 (05) ◽  
pp. 106-118
Author(s):  
Chao Wang ◽  
Rui Yuan ◽  
Yuqiu Sun ◽  
Yuanxiang Jiang ◽  
Changsheng Chen ◽  
...  
2021 ◽  
Author(s):  
Ias Sri Wahyuni ◽  
Rachid Sabre

In this article, we give a new method of multi-focus fusion images based on Dempster-Shafer theory using local variability (DST-LV). Indeed, the method takes into account the variability of observations of neighbouring pixels at the point studied. At each pixel, the method exploits the quadratic distance between the value of the pixel I (x, y) of the point studied and the value of all pixels which belong to its neighbourhood. Local variability is used to determine the mass function. In this work, two classes of Dempster-Shafer theory are considered: the fuzzy part and the focused part. We show that our method gives the significant and better result by comparing it to other methods.


2013 ◽  
Vol 467 ◽  
pp. 604-608
Author(s):  
Wen Liu An ◽  
Xiao Ling Wang

In this article, a new method for multi-focus image fusion via multiple wavelet bases is proposed.Firstly the wavelet transform is used to perform a multiscale decomposion on each image , then based on local gradient in the fusion to get primary fusion image .And then a set of the primary fusion images are obtained.Next these primary fusion images are fused to obtain final fusion iamge within spatial domain based on local variances weighted average rule.Experimental results show the new method is better than the traditional single wavelet base method in fusion effect.


2020 ◽  
Vol 11 (6) ◽  
pp. 37-51
Author(s):  
Ias Sri Wahyuni ◽  
Rachid Sabre

The goal of multi-focus image fusion is to integrate images with different focus objects in order to obtain a single image with all focus objects. In this paper, we give a new method based on neighbour local variability (NLV) to fuse multi-focus images. At each pixel, the method uses the local variability calculated from the quadratic difference between the value of the pixel and the value of all pixels in its neighbourhood. It expresses the behaviour of the pixel with respect to its neighbours. The variability preserves the edge function because it detects the sharp intensity of the image. The proposed fusion of each pixel consists of weighting each pixel by the exponential of its local variability. The quality of this fusion depends on the size of the neighbourhood region considered. The size depends on the variance and the size of the blur filter. We start by modelling the value of the neighbourhood region size as a function of the variance and the size of the blur filter. We compare our method to other methods given in the literature. We show that our method gives a better result.


Recent developments in the domain of information technology have made it possible to extract a knowledge of ocean from input images. The knowledge extraction can be performed using a number of operations such as image segmentation. The major objective of image segmentation is to segment focused and non-focused regions from an input image. The field depth of optical lenses is limited. A camera focuses only on those objects which lie in its field depth, rest of the objects are appeared as non-focused or blurry. For image processing, it is a general requirement that an input image must be all in focus image. In almost each domain such as medical imaging, weapon and aircraft detection, digital photography, and agriculture imaging, it is required to have an all-in focused input image. Image fusion is a process which combines two or more input images to create an all in focused complimentary fused image. Image fusion is considered as a challenging task due to irregular boundaries of focused and non-focused regions. In literature, multiple studies have addressed this issue, however they have reported promising results in creating a fully focused fused image. Moreover, they have considered different features to identify focused and non-focused regions from an input image. For better estimation of focused and non-focused regions,an ensemble of multiple features such as shape and texture-based features can be employed. Furthermore, it is required to obtain optimal weights which are to be assigned to each feature for creating a fused image. The focus of this study is to perform a multi-focus image fusion using an ensemble of multiple local features by weight optimization using a genetic algorithm. To perform this experimentation, nine multi-focus image datasets are collected where each dataset indicates an image pair of multi-focused images. The reason of this selection is two-fold, as they are publicly available, and it contain different types of multi-focus images. For reconstruction of a fully focused fused image, an ensemble of different shape and texture-based features such as Sobel Operator, Laplacian Operator and Local Binary Pattern is employed along with optimal weights obtained using a Genetic Algorithm. The experimental results have indicated improvement over previous fusion methods


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