Closed Contour Shape Descriptors with High Compression Properties Based on the Discrete Hartley Transform
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Publication date
2013ISBN
9781614993193
ISSN
0922-6389
Abstract
The quantitative analysis of shapes is required in some research fields, such as taxonomy, agronomy, ecology, medicine, among others. The quantification of an object shape, or a biological entity shape as extension, is usually performed on its closed contour data. Normally, the closed contours are automatically extracted from digital images. In these fields, the most used contour descriptors are the Elliptical Fourier Descriptors (EFD). In this paper we propose a new contour descriptor based on the Discrete Hartley Transform (DHT) that uses only half of the coefficients required by EFD to obtain a contour approximation with similar error measure. The proposed closed contour descriptors provide an excellent capability of contour information compression being suitable to be applied as input parameters of any shape classifier. The proposed parameterization can represent all kinds of closed curves and also it has the advantage that both the parameterization and the reconstructed shape from a reduced amount of them can be computed very efficiently by the fast Discrete Hartley Transform (DHT) algorithm.
Document Type
Chapter or part of a book
Language
English
Keywords
Imatges -- Processament
Pages
10 p.
Publisher
IOP Press
Citation
Martí-Puig, P., Reig Bolaño, R., & Danes, J. (2013). In Gibert K., Botti V. & Reig Bolaño R.(Eds.), Closed contour shape descriptors with high compression properties based on the discrete hartley transform. A: Frontiers in Artificial Intelligence and Applications, vol. 256, IOS Press, 2013, pp. 115-124 doi:10.3233/978-1-61499-320-9-115
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(c) 2013 IOP Press
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