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An MRF Optimisation Framework for Full 3D Helmholtz Stereopsis

机译:完整3D Helmholtz立体的MRF优化框架

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摘要

Accurate 3D modelling of real world objects is essential in many applications such as digital film production and cultural heritage preservation. However, current modelling techniques rely on assumptions to constrain the problem, effectively limiting the categories of scenes that can be reconstructed. A common assumption is that the scene's surface reflectance is Lambertian or known a priori. These constraints rarely hold true in practice and result in inaccurate reconstructions. Helmholtz Stereopsis (HS) addresses this limitation by introducing a reflectance agnostic modelling constraint, but prior work in this area has been predominantly limited to 2.5D reconstruction, providing only a partial model of the scene. In contrast, this paper introduces the first Markov Random Field (MRF) optimisation framework for full 3D HS. First, an initial reconstruction is obtained by performing 2.5D MRF optimisation with visibility constraints from multiple viewpoints and fusing the different outputs. Then, a refined 3D model is obtained through volumetric MRF optimisation using a tailored Iterative Conditional Modes (ICM) algorithm. The proposed approach is evaluated with both synthetic and real data. Results show that the proposed full 3D optimisation significantly increases both geometric and normal accuracy, being able to achieve sub-millimetre precision. Furthermore, the approach is shown to be robust to occlusions and noise.
机译:最佳世界对象的准确3D建模对于数码电影制作和文化遗产保存等许多应用中至关重要。然而,当前建模技术依赖于假设来限制问题,有效地限制可以重建的场景类别。常见的假设是场景的表面反射率是兰伯特或已知的先验。这些约束在实践中很少保持真实并导致重建不准确的重建。 Helmholtz Stereopsis(HS)通过引入反射率不可知建模约束来解决这一限制,但在该区域的前后工作主要限于2.5D重建,只提供场景的部分模型。相比之下,本文介绍了全3D 3D HS的第一个马尔可夫随机场(MRF)优化框架。首先,通过从多个视点的可见性约束执行2.5D MRF优化来获得初始重建,并融合不同的输出。然后,通过使用量身定制的迭代条件模式(ICM)算法通过体积MRF优化获得精细的3D模型。所提出的方法是用合成和实际数据进行评估的。结果表明,所提出的全3D优化显着提高了几何和正常精度,能够实现亚毫米精度。此外,该方法被证明是对闭塞和噪声的强大。

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