APPLICATION OF THE ALGORITHM OF PARAMETRIC AND NON-PARAMETRIC CONFIDENCE INTERVALS IN PRE-PROCESSING IMAGE DATA

Authors:

Mohammad Kaisb Layous Alhasnawi,

DOI NO:

https://doi.org/10.26782/jmcms.2023.11.00001

Keywords:

Image processing,image pre-processing,Image,Noise,parametric confidence interval,nonparametric confidence interval,

Abstract

Digital image processing and enhancement is one of the most important and frequently used issues in many fields of image processing. When handling images or sending them over a particular channel, they are subject to certain noise and require filtering methods. In this paper, the parametric confidence interval algorithm was compared to the nonparametric confidence interval algorithm for processing the noisy images. The results showed that a nonparametric confidence interval algorithm is better at defining the external parameters of an image in terms of noise elimination and enhancement landmarks.

Refference:

I. Buenestado, Pablo Iand Acho, Leonardo,(2018). : “Image Segmentation Based on Statistical Confidence Intervals.” Journals Entropy. Vol. 20, Number 46, Issue 1.
II. Carlo V. Fiorio,(2004), : “Confidence intervals for kernel density estimation.” The Stata Journal. vol. 4, Number 2, pp. 168–179.
III. Hmood, Munaf Yousif ,(2011), : “Estimate The Nonparametric Regression Function Using Canonical kernel.” Journal of economics and administrative sciences, Vol. 17, Issue 61, pp.212-225.
IV. Jaber, Asmaa Ghalib, Eesa, Aseel Muslim & Bushra Saad Jasim, (2021), : “Image Segmentation by Using Thresholding Technique in Two Stages.” Periodicals of engineering and natural sciences. Issa 2303-4521, Volume 9, Number 4 pp531-541 .

V. J. Verne, Image Pre-Processing.

VI. Li, Thing,(2012), : “Contributions to Mean Shift filtering and segmentation : Application to MRI ischemic data.”

VII. Prabhishek Singh & Raj Shree,( 2016), : “Speckle Noise: Modelling and Implementation.” International Science Press. 9 (17), pp. 8717-8727.

VIII. RafaelC.Gonzalez.,Woods, R.E.,(2002), “Digital Image Processing.” 2nd edition , Publisher Prentic Hal, New jersey.

IX. S. Rajeshwari& T. Sree Sharmila,(2013), : “Efficient quality analysis of MRI image using preprocessing techniques.”

X. Umbaugh Cott E., (1998), : “Computer Vision and Image Processing Practical Approach using CVIP tools.” Practice Hall PTR.

XI. Wasserman, Larry, : “All of Nonparametric Statistics.”

XII. Yen-Chi Chen,(2017), : “Tutorial on Kernel Density Estimation and Recent Advances.” Biostatistics & Epidemiology. Volume 1, Issue 1, pp.161-187.

View Download