2015
DOI: 10.1007/s11042-015-3063-x
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Semantic portrait color transfer with internet images

Abstract: We present a novel color transfer method for portraits by exploring their high-level semantic information. Given a source portrait image, we first use Face++ to search images with similar poses as the input from a database, and the user chooses one satisfactory image from the results as the target. The database consists of a collection of portrait images downloaded from the Internet, and each of them is manually segmented using image matting as a preprocessing step. Second, we extract portrait foregrounds from… Show more

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Cited by 36 publications
(12 citation statements)
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“…The proposed method can also be utilized to understand the optimal solutions to other optimization problems, such as regression tasks [163], covert communication system [164]- [166], shape registration [167], micro-expression spotting [168], [169], medical diagnosis [170]- [173], image editing [174]- [176], engineering optimization problems [177], [178], brain function prediction [179], [180], service ecosystem [181], [182], image dehazing [183]- [185], epidemic prevention and control [186], [187], large scale network analysis [188], energy storage planning and scheduling [189], Lunar impact crater identification and age estimation [190], social recommendation and QOS-aware service composition [191]- [193], 3D deformable shape analysis [194], [195], and feature selection [196]- [198].…”
Section: Discussionmentioning
confidence: 99%
“…The proposed method can also be utilized to understand the optimal solutions to other optimization problems, such as regression tasks [163], covert communication system [164]- [166], shape registration [167], micro-expression spotting [168], [169], medical diagnosis [170]- [173], image editing [174]- [176], engineering optimization problems [177], [178], brain function prediction [179], [180], service ecosystem [181], [182], image dehazing [183]- [185], epidemic prevention and control [186], [187], large scale network analysis [188], energy storage planning and scheduling [189], Lunar impact crater identification and age estimation [190], social recommendation and QOS-aware service composition [191]- [193], 3D deformable shape analysis [194], [195], and feature selection [196]- [198].…”
Section: Discussionmentioning
confidence: 99%
“…Chia et al [5] require a pre-segmented target image with semantic labels and search within Internet images with associated semantic labels to colorize the target image. The method is also generalized to semantic portrait color transfer [28]. Deshpande et al [29] propose an automated method for image colorization that learns colorization from a set of examples (rather than one reference image) by exploiting the LEARCH (learning-tosearch) framework.…”
Section: Related Workmentioning
confidence: 99%
“…The majority of techniques equalizes the mean and variance of a style and content image to control color distributions via luminance-based (Reinhard et al 2001) or HSL-based (Neumann and Neumann 2005) histograms. Extensions integrate feature maps to consider local information as well, such as image segmentation (Wu et al 2013;Xiao and Ma 2009), edge-aware texture descriptors (Arbelot et al 2016), and semantics (Yang et al 2017) to colorize grayscale images. With interactive methods it is also possible to maintain control over a set of colors that is involved in palette-based color transfers (Chang et al 2015;Pouli and Reinhard 2011).…”
Section: Style Transfer Using Image Statisticsmentioning
confidence: 99%