In this paper, we propose a method which implements Shannon’s information theory on entropy evaluation and use the results for weight decision. We assume that there are two conventional methods, LA and ELA. Using Shannon’s information theory we obtained entropy values which are used as weights for choosing interpolation method. The original image is downsampled to be low resolution image, where we apply Shannon’s entropy evaluation equation. Finally, result image is obtained by weighted interpolation between LA and ELA. Simulation results show the proposed method gives satisfactory results
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Vol. IInternational audienceThis paper deals with an entropic approach as unsupervised thresholding ...
There are many methods for determining the Classification Accuracy. In this paper significance of En...
This paper investigates R'enyi's generalized entropies under linear and nonlinear scale-sp...
Quantitative characterizations of gray scale images of typical patterns ware carried out by calculat...
The paper introduces entropy as a measure for 1D signals. We propose an entropy measure of the relat...
Abstract: Segmentation of color images is important for various image analysis problems and is somew...
Image is made of up pixels that contain some information. The dossier load of an image is measured b...
The quality of an image affects its utility and image quality assessment has been a hot research top...
This paper describes the method which allows an estimation of information entropy in the meaning of ...
By combining a maximum conditional entropy principle with a basic equation of (Shannon) information ...
The Boltzmann–Gibbs and Tsallis entropies are essential concepts in statistical physics, which have ...
This paper presents a thorough study of different types of entropies. Application and comparison of ...
The definition of Shannon's entropy in the context of information theory is critically examined and ...
Image analysis is a fundamental task for extracting information from images acquired across a range ...
Abstract: The definition of Shannon's entropy in the context of infonnation theory is criticall...
Vol. IInternational audienceThis paper deals with an entropic approach as unsupervised thresholding ...
There are many methods for determining the Classification Accuracy. In this paper significance of En...
This paper investigates R'enyi's generalized entropies under linear and nonlinear scale-sp...
Quantitative characterizations of gray scale images of typical patterns ware carried out by calculat...
The paper introduces entropy as a measure for 1D signals. We propose an entropy measure of the relat...