2021
DOI: 10.48550/arxiv.2112.00719
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HyperInverter: Improving StyleGAN Inversion via Hypernetwork

Abstract: Real-world image manipulation has achieved fantastic progress in recent years as a result of the exploration and utilization of GAN latent spaces. GAN inversion is the first step in this pipeline, which aims to map the real image to the latent code faithfully. Unfortunately, the majority of existing GAN inversion methods fail to meet at least one of the three requirements listed below: high reconstruction quality, editability, and fast inference. We present a novel two-phase strategy in this research that fits… Show more

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Cited by 1 publication
(1 citation statement)
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References 46 publications
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“…While most generator tuning approaches improve the image inversion via a per-image optimization of the generator weights, such an approach is costly in terms of inference time. To reduce this inference overhead, Alaluf et al [ATM * 21] and Dinh et al [DTNH21] propose a hypernetwork-based encoder that learns how to modify the pre-trained generator weights to best reconstruct a given image. Such a learned approach results in high-fidelity reconstructions and edits, at a fraction of the time compared to optimization-based tuning approaches.…”
Section: Gan Inversionmentioning
confidence: 99%
“…While most generator tuning approaches improve the image inversion via a per-image optimization of the generator weights, such an approach is costly in terms of inference time. To reduce this inference overhead, Alaluf et al [ATM * 21] and Dinh et al [DTNH21] propose a hypernetwork-based encoder that learns how to modify the pre-trained generator weights to best reconstruct a given image. Such a learned approach results in high-fidelity reconstructions and edits, at a fraction of the time compared to optimization-based tuning approaches.…”
Section: Gan Inversionmentioning
confidence: 99%