Advances in 3D Neural Stylization: A Survey
CoRR(2023)
Abstract
Modern artificial intelligence provides a novel way of producing digital art
in styles. The expressive power of neural networks enables the realm of visual
style transfer methods, which can be used to edit images, videos, and 3D data
to make them more artistic and diverse. This paper reports on recent advances
in neural stylization for 3D data. We provide a taxonomy for neural stylization
by considering several important design choices, including scene
representation, guidance data, optimization strategies, and output styles.
Building on such taxonomy, our survey first revisits the background of neural
stylization on 2D images, and then provides in-depth discussions on recent
neural stylization methods for 3D data, where we also provide a mini-benchmark
on artistic stylization methods. Based on the insights gained from the survey,
we then discuss open challenges, future research, and potential applications
and impacts of neural stylization.
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