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首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Learning to estimate surface normal via deep photometric stereo networks
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Learning to estimate surface normal via deep photometric stereo networks

机译:通过深度光度立体网络学习估算表面正常

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摘要

Photometric stereo, aiming at estimating the surface normal of an object from a set of images under different illumination conditions, has gained a lot of attention recently. However, most existing state-of-the-art works of photometric stereo heavily rely on elaborately light calibration which limit the practical application of this technology. In this paper, we propose a self-calibrating photometric stereo method which could accurately reconstruction the surface normal. Specifically, a two-stage deep architecture is developed to perform light calibration and surface normal estimation simultaneously. Extensively experiment results on public available real datasets demonstrate that our model could estimate surface normal more accurately than most state-of-the-arts.
机译:光度立体声,旨在在不同照明条件下从一组图像估计物体的表面法线,最近获得了很多关注。 然而,最现有的最先进的光度立体声作品严重依赖于精心轻巧的光线校准,这限制了该技术的实际应用。 在本文中,我们提出了一种自校准光度立体声方法,可以准确地重建表面正常。 具体地,开发了两级深度架构以同时执行光校准和表面正常估计。 公共可用实际数据集的广泛实验结果表明,我们的模型可以比大多数最先进的更准确地估计表面正常。

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