Automatic Quality Measurement and Parameter Selection for Example-based Texture Synthesis
Publication: Research › Report – Annual report year: 2012
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Automatic Quality Measurement and Parameter Selection for Example-based Texture Synthesis. / Laursen, Lasse Farnung; Clemmensen, Line Katrine Harder; Bærentzen, Jakob Andreas; Igarashi, T.; Ersbøll, Bjarne Kjær.
Kongens Lyngby : Technical University of Denmark, 2012. 31 p. (IMM-Technical Report-2012; No. 07).Publication: Research › Report – Annual report year: 2012
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TY - RPRT
T1 - Automatic Quality Measurement and Parameter Selection for Example-based Texture Synthesis
A1 - Laursen,Lasse Farnung
A1 - Clemmensen,Line Katrine Harder
A1 - Bærentzen,Jakob Andreas
A1 - Igarashi,T.
A1 - Ersbøll,Bjarne Kjær
AU - Laursen,Lasse Farnung
AU - Clemmensen,Line Katrine Harder
AU - Bærentzen,Jakob Andreas
AU - Igarashi,T.
AU - Ersbøll,Bjarne Kjær
PB - Technical University of Denmark
PY - 2012
Y1 - 2012
N2 - Texture synthesis algorithms have been researched extensively in the past decade. However, most synthesis algorithms are governed by a set of parameters and produce different results depending on which parameter settings are chosen in conjunction with an exemplar used as a basis for synthesis. So far, automatically selecting parameters suitable for synthesis has been a relatively unexplored topic. In effect, this makes texture synthesis supervised rather than fully automatic.<br/>In this technical paper, we propose automatic parameter optimization methods for example based texture synthesis. We cover research to directly estimate specific texture synthesis parameters, such as patch size and iteration convergence, based on input textures. We also examine various similarity measures and evaluate their effectiveness. The goal for each measure is to properly evaluate how well the resulting synthesis compares to the original input.<br/>A good similarity measure will enable the search for the optimal texture synthesis parameters by maximizing the quality of the synthesis as a function of parameters.<br/>We apply presented methods to a state of the art texture synthesis algorithm, namely the one proposed by Kopf et al [14]. It is easy to find a set of exemplars for which there is no single optimal set of settings. The results show a promising foundation for further research in establishing an automated optimal synthesis for a multitude of textures.
AB - Texture synthesis algorithms have been researched extensively in the past decade. However, most synthesis algorithms are governed by a set of parameters and produce different results depending on which parameter settings are chosen in conjunction with an exemplar used as a basis for synthesis. So far, automatically selecting parameters suitable for synthesis has been a relatively unexplored topic. In effect, this makes texture synthesis supervised rather than fully automatic.<br/>In this technical paper, we propose automatic parameter optimization methods for example based texture synthesis. We cover research to directly estimate specific texture synthesis parameters, such as patch size and iteration convergence, based on input textures. We also examine various similarity measures and evaluate their effectiveness. The goal for each measure is to properly evaluate how well the resulting synthesis compares to the original input.<br/>A good similarity measure will enable the search for the optimal texture synthesis parameters by maximizing the quality of the synthesis as a function of parameters.<br/>We apply presented methods to a state of the art texture synthesis algorithm, namely the one proposed by Kopf et al [14]. It is easy to find a set of exemplars for which there is no single optimal set of settings. The results show a promising foundation for further research in establishing an automated optimal synthesis for a multitude of textures.
BT - Automatic Quality Measurement and Parameter Selection for Example-based Texture Synthesis
T3 - IMM-Technical Report-2012
T3 - en_GB
ER -