RayNet:学习用射线势进行体积三维重建

Despoina Paschalidou, Ali O. Ulusoy, Carolin Schmitt, L. Gool, Andreas Geiger
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引用次数: 77

摘要

在本文中,我们考虑了使用从不同视图捕获的图像重建密集三维模型的问题。最近基于卷积神经网络(CNN)的方法允许从数据中学习整个任务。然而,它们没有纳入图像形成的物理,如透视几何和遮挡。相反,基于具有射线势的马尔可夫随机场(MRF)的经典方法明确地模拟了这些物理过程,但它们无法处理不同视点之间的大表面外观变化。在本文中,我们提出了RayNet,它结合了两个框架的优势。RayNet集成了一个学习视图不变特征表示的CNN和一个明确编码透视投影和遮挡物理的MRF。我们使用经验风险最小化对RayNet进行端到端培训。我们在具有挑战性的真实世界数据集上彻底评估了我们的方法,并展示了其优于分段训练基线、手工制作模型以及其他基于学习的方法的优点。
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RayNet: Learning Volumetric 3D Reconstruction with Ray Potentials
In this paper, we consider the problem of reconstructing a dense 3D model using images captured from different views. Recent methods based on convolutional neural networks (CNN) allow learning the entire task from data. However, they do not incorporate the physics of image formation such as perspective geometry and occlusion. Instead, classical approaches based on Markov Random Fields (MRF) with ray-potentials explicitly model these physical processes, but they cannot cope with large surface appearance variations across different viewpoints. In this paper, we propose RayNet, which combines the strengths of both frameworks. RayNet integrates a CNN that learns view-invariant feature representations with an MRF that explicitly encodes the physics of perspective projection and occlusion. We train RayNet end-to-end using empirical risk minimization. We thoroughly evaluate our approach on challenging real-world datasets and demonstrate its benefits over a piece-wise trained baseline, hand-crafted models as well as other learning-based approaches.
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