Generalization of pixel-wise phase estimation by CNN and improvement of phase-unwrapping by MRF optimization for one-shot 3D scan

Hiroto Harada, M. Mikamo, Furukawa Ryo, R. Sagawa, Hiroshi Kawasaki
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Abstract

Active stereo technique using single pattern projection, a.k.a. one-shot 3D scan, have drawn a wide attention from industry, medical purposes, etc. One severe drawback of one-shot 3D scan is sparse reconstruction. In addition, since spatial pattern becomes complicated for the purpose of efficient embedding, it is easily affected by noise, which results in unstable decoding. To solve the problems, we propose a pixel-wise interpolation technique for one-shot scan, which is applicable to any types of static pattern if the pattern is regular and periodic. This is achieved by U-net which is pre-trained by CG with efficient data augmentation algorithm. In the paper, to further overcome the decoding instability, we propose a robust correspondence finding algorithm based on Markov random field (MRF) optimization. We also propose a shape refinement algorithm based on b-spline and Gaussian kernel interpolation using explicitly detected laser curves. Experiments are conducted to show the effectiveness of the proposed method using real data with strong noises and textures.
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基于CNN的逐像素相位估计泛化及基于MRF优化的单次三维扫描相位展开改进
单模式投影的主动立体技术,又称一次性三维扫描,已引起工业、医学等领域的广泛关注。单次三维扫描的一个严重缺点是重建稀疏。此外,为了有效嵌入,空间模式变得复杂,容易受到噪声的影响,导致解码不稳定。为了解决这些问题,我们提出了一种单次扫描的逐像素插值技术,该技术适用于任何类型的静态模式,只要该模式是规则的和周期性的。这是由CG用高效的数据增强算法对U-net进行预训练实现的。为了进一步克服解码不稳定性,本文提出了一种基于马尔可夫随机场(MRF)优化的鲁棒通信查找算法。我们还提出了一种基于b样条和高斯核插值的形状优化算法。在具有强噪声和强纹理的真实数据中进行了实验,验证了该方法的有效性。
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