Lift3D: Synthesize 3D Training Data by Lifting 2D GAN to 3D Generative
Radiance Field
- URL: http://arxiv.org/abs/2304.03526v1
- Date: Fri, 7 Apr 2023 07:43:02 GMT
- Title: Lift3D: Synthesize 3D Training Data by Lifting 2D GAN to 3D Generative
Radiance Field
- Authors: Leheng Li, Qing Lian, Luozhou Wang, Ningning Ma, Ying-Cong Chen
- Abstract summary: We propose Lift3D, an inverted 2D-to-3D generation framework to achieve the data generation objectives.
By lifting well-disentangled 2D GAN to 3D object NeRF, Lift3D provides explicit 3D information of generated objects.
We evaluate the effectiveness of our framework by augmenting autonomous driving datasets.
- Score: 16.15190186574068
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This work explores the use of 3D generative models to synthesize training
data for 3D vision tasks. The key requirements of the generative models are
that the generated data should be photorealistic to match the real-world
scenarios, and the corresponding 3D attributes should be aligned with given
sampling labels. However, we find that the recent NeRF-based 3D GANs hardly
meet the above requirements due to their designed generation pipeline and the
lack of explicit 3D supervision. In this work, we propose Lift3D, an inverted
2D-to-3D generation framework to achieve the data generation objectives. Lift3D
has several merits compared to prior methods: (1) Unlike previous 3D GANs that
the output resolution is fixed after training, Lift3D can generalize to any
camera intrinsic with higher resolution and photorealistic output. (2) By
lifting well-disentangled 2D GAN to 3D object NeRF, Lift3D provides explicit 3D
information of generated objects, thus offering accurate 3D annotations for
downstream tasks. We evaluate the effectiveness of our framework by augmenting
autonomous driving datasets. Experimental results demonstrate that our data
generation framework can effectively improve the performance of 3D object
detectors. Project page: https://len-li.github.io/lift3d-web.
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