A Family of High Continuity Subdivision Schemes Based on Probability Distribution

Subdivision schemes are famous for the generation of smooth curves and surfaces in CAGD (Computer Aided Geometric Design). The continuity is an important property of subdivision schemes. Subdivision schemes having high continuity are always required for geometric modeling. Probability distribution i...

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Main Authors: Muhammad Asghar, Muhammad Javed Iqbal, Ghulam Mustafa
Format: Article
Language:English
Published: Mehran University of Engineering and Technology 2019-04-01
Series:Mehran University Research Journal of Engineering and Technology
Online Access:http://publications.muet.edu.pk/index.php/muetrj/article/view/959
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spelling doaj-9bd630979b824f9bb8154c77d1b2ebe52020-11-25T01:00:23ZengMehran University of Engineering and TechnologyMehran University Research Journal of Engineering and Technology0254-78212413-72192019-04-01382389398959A Family of High Continuity Subdivision Schemes Based on Probability DistributionMuhammad Asghar0Muhammad Javed Iqbal1Ghulam Mustafa2Department of Mathematics, The Islamia University of Bahawalpur, Bahawalpur, PakistanDepartment of Mathematics, National College of Business Administration and Economics, Sub campus , Bahawalpur, PakistanDepartment of Mathematics, The Islamia University of Bahawalpur, Bahawalpur, PakistanSubdivision schemes are famous for the generation of smooth curves and surfaces in CAGD (Computer Aided Geometric Design). The continuity is an important property of subdivision schemes. Subdivision schemes having high continuity are always required for geometric modeling. Probability distribution is the branch of statistics which is used to find the probability of an event. We use probability distribution in the field of subdivision schemes. In this paper, a simplest way is introduced to increase the continuity of subdivision schemes. A family of binary approximating subdivision schemes with probability parameter p is constructed by using binomial probability generating function. We have derived some family members and analyzed the important properties such as continuity, Holder regularity, degree of generation, degree of reproduction and limit stencils. It is observed that, when the probability parameter p = 1/2, the family of subdivision schemes have maximum continuity, generation degree and Holder regularity. Comparison shows that our proposed family has high continuity as compare to the existing subdivision schemes. The proposed family also preserves the shape preserving property such as convexity preservation. Subdivision schemes give negatively skewed, normal and positively skewed behavior on convex data due to the probability parameter. Visual performances of the family are also presented.http://publications.muet.edu.pk/index.php/muetrj/article/view/959
collection DOAJ
language English
format Article
sources DOAJ
author Muhammad Asghar
Muhammad Javed Iqbal
Ghulam Mustafa
spellingShingle Muhammad Asghar
Muhammad Javed Iqbal
Ghulam Mustafa
A Family of High Continuity Subdivision Schemes Based on Probability Distribution
Mehran University Research Journal of Engineering and Technology
author_facet Muhammad Asghar
Muhammad Javed Iqbal
Ghulam Mustafa
author_sort Muhammad Asghar
title A Family of High Continuity Subdivision Schemes Based on Probability Distribution
title_short A Family of High Continuity Subdivision Schemes Based on Probability Distribution
title_full A Family of High Continuity Subdivision Schemes Based on Probability Distribution
title_fullStr A Family of High Continuity Subdivision Schemes Based on Probability Distribution
title_full_unstemmed A Family of High Continuity Subdivision Schemes Based on Probability Distribution
title_sort family of high continuity subdivision schemes based on probability distribution
publisher Mehran University of Engineering and Technology
series Mehran University Research Journal of Engineering and Technology
issn 0254-7821
2413-7219
publishDate 2019-04-01
description Subdivision schemes are famous for the generation of smooth curves and surfaces in CAGD (Computer Aided Geometric Design). The continuity is an important property of subdivision schemes. Subdivision schemes having high continuity are always required for geometric modeling. Probability distribution is the branch of statistics which is used to find the probability of an event. We use probability distribution in the field of subdivision schemes. In this paper, a simplest way is introduced to increase the continuity of subdivision schemes. A family of binary approximating subdivision schemes with probability parameter p is constructed by using binomial probability generating function. We have derived some family members and analyzed the important properties such as continuity, Holder regularity, degree of generation, degree of reproduction and limit stencils. It is observed that, when the probability parameter p = 1/2, the family of subdivision schemes have maximum continuity, generation degree and Holder regularity. Comparison shows that our proposed family has high continuity as compare to the existing subdivision schemes. The proposed family also preserves the shape preserving property such as convexity preservation. Subdivision schemes give negatively skewed, normal and positively skewed behavior on convex data due to the probability parameter. Visual performances of the family are also presented.
url http://publications.muet.edu.pk/index.php/muetrj/article/view/959
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