Título: Relevance of multifractal textures in static images
Autores: Turiel, Antonio
Fecha: 1970-01-01
Publicador: Elcvia: electronics letters on computer vision and image analysis
Fuente:
Tipo:
Tema: statistical pattern analysis
Descripción: In the latest years, multifractal analysis has been applied to image analysis. The multifractal framework takes advantage of multiscaling properties of images to decompose them as a collection of different fractal components, each one associated to a singularity exponent (an exponent characterizing the way in which that part of the image evolves under changes in scale). One of those components, characterized by the least possible exponent, seems to be the most informative about the whole image. Very recently it has been proposed an algorithm to reconstruct the image from this component, just using physical information conveyed by it. In this paper, we will show that the same algorithm can be used to assess the relevance of the other fractal parts of the image. keywords: statistical pattern analysis
Idioma: No aplica

Artículos similares:

Fast 3D-Vision System to Classify Metallic Coins by their Embossed Topography por Hossfeld, Michael,Chu, Weiyi,Adameck, Markus,Eich, Manfred
Facial Emotional Classifier For Natural Interaction por Hupont, Isabelle,Cerezo, Eva,Baldassarri, Sandra
An Adaptive Color Image Segmentation por K.S., Deshmukh,G. N., Shinde
Principal Deformations Modes of Articulated Models for the Analysis of 3D Spine Deformities por Boisvert, Jonathan,Cheriet, Farida,Pennec, Xavier,Labelle, Hubert,Ayache, Nicholas
Human Shape-Motion Analysis In Athletics Videos for Coarse To Fine Action/Activity Recognition Using Transferable Belief Model por Ramasso, Emmanuel,Panagiotakis, Costas,Rombaut, Michèle,Pellerin, Denis,Tziritas, Georgios
Noise reduction on mammographic phantom images por Adel, Mouloud,Zuwala, Daniel,Rasigni, Monique,Bourennane, Salah
Distortion Correction for 3D Scan of Trunk Swaying Human Body Segments por Funatomi, Takuya,Iiyama, Masaaki,Kakusho, Koh,Minoh, Michihiko
10 
Finding Kinematic Structure in Time Series Volume Data por Mukasa, Tomoyuki,Nobuhara, Shohei,Maki, Atsuto,Matsuyama, Takashi