Benchmarking Non-Photorealistic Rendering of Portraits

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Date
2017
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Association for Computing Machinery, Inc (ACM)
Abstract
We present a set of images for helping NPR practitioners evaluate their image-based portrait stylisation algorithms. Using a standard set both facilitates comparisons with other methods and helps ensure that presented results are representative. We give two levels of di culty, each consisting of 20 images selected systematically so as to provide good coverage of several possible portrait characteristics. We applied three existing portraitspeci c stylisation algorithms, two generalpurpose stylisation algorithms, and one general learn ing based stylisation algorithm to the rst level of the benchmark, corresponding to the type of constrained images that have o ften been used in portraitspeci c work. We found that the existing methods are generally e ective on this new image set, demon strating that level one of the benchmark is tractable; challenges remain at level two. Results revealed several advantages conferred by portraitspeci c algorithms over generalpurpose algorithms: portraitspeci c algorithms can use domainspeci c information to preserve key details such as eyes and to eliminate extraneous details, and they have more scope for semantically meaningful abstraction due to the underlying face model. Finally, we pro vide some thoughts on systematically extending the benchmark to higher levels of di fficulty.
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@inproceedings{
10.1145:3092919.3092921
, booktitle = {
Non-Photorealistic Animation and Rendering
}, editor = {
Holger Winnemoeller and Lyn Bartram
}, title = {{
Benchmarking Non-Photorealistic Rendering of Portraits
}}, author = {
Rosin, Paul L.
and
Mould, David
and
Winnem, Holger
and
Berger, Itamar
and
Collomosse, John
and
Lai, Yu-Kun
and
Li, Chuan
and
Li, Hua
and
Shamir, Ariel
and
Wand, Michael
and
Wang, Tinghuai
}, year = {
2017
}, publisher = {
Association for Computing Machinery, Inc (ACM)
}, ISSN = {
-
}, ISBN = {
978-1-4503-5081-5
}, DOI = {
10.1145/3092919.3092921
} }
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