ZeroShape: Regression-based Zero-shot Shape Reconstruction
- URL: http://arxiv.org/abs/2312.14198v2
- Date: Tue, 16 Jan 2024 08:18:08 GMT
- Title: ZeroShape: Regression-based Zero-shot Shape Reconstruction
- Authors: Zixuan Huang, Stefan Stojanov, Anh Thai, Varun Jampani, James M. Rehg
- Abstract summary: We study the problem of single-image zero-shot 3D shape reconstruction.
Recent works learn zero-shot shape reconstruction through generative modeling of 3D assets.
We show that ZeroShape achieves superior performance over state-of-the-art methods.
- Score: 56.652766763775226
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We study the problem of single-image zero-shot 3D shape reconstruction.
Recent works learn zero-shot shape reconstruction through generative modeling
of 3D assets, but these models are computationally expensive at train and
inference time. In contrast, the traditional approach to this problem is
regression-based, where deterministic models are trained to directly regress
the object shape. Such regression methods possess much higher computational
efficiency than generative methods. This raises a natural question: is
generative modeling necessary for high performance, or conversely, are
regression-based approaches still competitive? To answer this, we design a
strong regression-based model, called ZeroShape, based on the converging
findings in this field and a novel insight. We also curate a large real-world
evaluation benchmark, with objects from three different real-world 3D datasets.
This evaluation benchmark is more diverse and an order of magnitude larger than
what prior works use to quantitatively evaluate their models, aiming at
reducing the evaluation variance in our field. We show that ZeroShape not only
achieves superior performance over state-of-the-art methods, but also
demonstrates significantly higher computational and data efficiency.
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