Title of article
Symmetric PH and EP distributions and their applications to the probability Hough transform
Author/Authors
Quanlin Li، نويسنده , , Guanghui Wang، نويسنده , , Yuan Zhou، نويسنده ,
Issue Information
دوهفته نامه با شماره پیاپی سال 2004
Pages
22
From page
823
To page
844
Abstract
In this paper, we first introduce a symmetric phase type (PH) distribution, and then propose a symmetric exponential-polynomial type (EP) distribution based on the symmetric PH distribution. The class of symmetric EP distributions is illustrated to be so large that an arbitrary symmetric probability density function in L2(−∞, +∞), which is the space of square integrable functions on the real line, can be approximated in (−∞, +∞) by a sequence of symmetric EP probability density functions. We prove this result by means of a constructive approach based on two orthogonal decompositions. Laguerre spectrum decomposition and Hermite spectrum decomposition. We also provide a moment-based approach for simply determining a symmetric EP probability density function to approximatively express a symmetric random variable under which some moments of the symmetric random variable are given. We further propose multidimensional symmetric PH and EP distributions and provide their useful structures and properties. Finally, we apply the symmetric PH and EP distributions to study the probability Hough transform.
Keywords
Pattern recognition , image analysis , The probability Hough transform , PH distribution , Symmetric EP distribution , Symmetric PH distribution , Orthogonal basis , Laguerre polynomial , Computer vision
Journal title
Computers and Mathematics with Applications
Serial Year
2004
Journal title
Computers and Mathematics with Applications
Record number
919958
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