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Evaluation and Comparison of Edge-Preserving Filters

2020-12-26 16:35:36
Sarah Gingichashvili, Dani Lischinski

Abstract

Edge-preserving filters play an essential role in some of the most basic tasks of computational photography, such as abstraction, tonemapping, detail enhancement and texture removal, to name a few. The abundance and diversity of smoothing operators, accompanied by a lack of methodology to evaluate output quality and/or perform an unbiased comparison between them, could lead to misunderstanding and potential misuse of such methods. This paper introduces a systematic methodology for evaluating and comparing such operators and demonstrates it on a diverse set of published edge-preserving filters. Additionally, we present a common baseline along which a comparison of different operators can be achieved and use it to determine equivalent parameter mappings between methods. Finally, we suggest some guidelines for objective comparison and evaluation of edge-preserving filters.

Abstract (translated)

URL

https://arxiv.org/abs/2012.13778

PDF

https://arxiv.org/pdf/2012.13778.pdf


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