Proceedings of the 29th ACM International Conference on Multimedia 2021
DOI: 10.1145/3474085.3475274
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Attribute-specific Control Units in StyleGAN for Fine-grained Image Manipulation

Abstract: Image manipulation with StyleGAN has been an increasing concern in recent years. Recent works have achieved tremendous success in analyzing several semantic latent spaces to edit the attributes of the generated images. However, due to the limited semantic and spatial manipulation precision in these latent spaces, the existing endeavors are defeated in fine-grained StyleGAN image manipulation, i.e., local attribute translation. To address this issue, we discover attribute-specific control units, which consist o… Show more

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Cited by 15 publications
(7 citation statements)
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References 31 publications
(71 reference statements)
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“…However, whilst several methods identify ways of manipulating the latent space of GANs to bring about global semantic changes-either in a supervised [16,44,48,47] or unsupervised [53,49,20,52,42] manner-many of them struggle to apply local changes to regions of interest in the image. In this framework of local image editing, one can swap certain parts between images [11,24,8,50,32,2], or modify the style at particular regions [54,55,5,63,62,39,26]. This is achieved with techniques such as clustering [11,62,5,26], manipulating the AdaIN [23] parameters [55,54], or/and operating on the feature maps themselves [54,5,62] to aid the locality of the edit.…”
Section: Related Workmentioning
confidence: 99%
See 3 more Smart Citations
“…However, whilst several methods identify ways of manipulating the latent space of GANs to bring about global semantic changes-either in a supervised [16,44,48,47] or unsupervised [53,49,20,52,42] manner-many of them struggle to apply local changes to regions of interest in the image. In this framework of local image editing, one can swap certain parts between images [11,24,8,50,32,2], or modify the style at particular regions [54,55,5,63,62,39,26]. This is achieved with techniques such as clustering [11,62,5,26], manipulating the AdaIN [23] parameters [55,54], or/and operating on the feature maps themselves [54,5,62] to aid the locality of the edit.…”
Section: Related Workmentioning
confidence: 99%
“…In this framework of local image editing, one can swap certain parts between images [11,24,8,50,32,2], or modify the style at particular regions [54,55,5,63,62,39,26]. This is achieved with techniques such as clustering [11,62,5,26], manipulating the AdaIN [23] parameters [55,54], or/and operating on the feature maps themselves [54,5,62] to aid the locality of the edit. Other approaches employ additional latent spaces or architectures [32,39], require the computation of expensive gradient maps [54,55] and semantic segmentation masks/networks [55,64,39], or require manually specified regions of interest [63].…”
Section: Related Workmentioning
confidence: 99%
See 2 more Smart Citations
“…In StyleSpace-Analysis [92], the translation vector is computed in the S space for better disentanglement, and much fewer samples are required (e.g., to compute n S . ACU [169] extends StyleSpaceAnalysis by also manipulating feature maps in the generator, which can achieve more realistic FAM results without damaging the spatial disentanglement of image changes. On the other hand, InterFaceGAN [33] models n Z as the normal vector of hyper-planes separating latent codes corresponding to different attribute labels.…”
Section: Supervised Approachesmentioning
confidence: 99%