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A Contour Completion Model for Augmenting Surface Reconstructions

机译:增强表面重建的轮廓完井模型

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The availability of commodity depth sensors such as Kinect has enabled development of methods which can densely reconstruct arbitrary scenes. While the results of these methods are accurate and visually appealing, they are quite often incomplete. This is either due to the fact that only part of the space was visible during the data capture process or due to the surfaces being occluded by other objects in the scene. In this paper, we address the problem of completing and refining such reconstructions. We propose a method for scene completion that can infer the layout of the complete room and the full extent of partially occluded objects. We propose a new probabilistic model, Contour Completion Random Fields, that allows us to complete the boundaries of occluded surfaces. We evaluate our method on synthetic and real world reconstructions of 3D scenes and show that it quantitatively and qualitatively outperforms standard methods. We created a large dataset of partial and complete reconstructions which we will make available to the community as a benchmark for the scene completion task. Finally, we demonstrate the practical utility of our algorithm via an augmented-reality application where objects interact with the completed reconstructions inferred by our method.
机译:商品深度传感器的可用性,如Kinect,使得能够开发可以密集地重建任意场景。虽然这些方法的结果准确且视觉上有吸引力,但它们通常不完整。这是由于在数据捕获过程中只能看到空间的一部分,或者由于场景中的其他对象被遮挡的曲面。在本文中,我们解决了完成和炼制这些重建的问题。我们提出了一种用于场景完成的方法,可以推断完整房间的布局以及部分封闭对象的全部范围。我们提出了一种新的概率模型,轮廓完成随机字段,允许我们完成遮挡表面的边界。我们评估我们对3D场景的合成和现实世界重建的方法,并表明它定量和定性地优于标准方法。我们创建了一个局部和完整的重建的大型数据集,我们将为社区提供作为场景完成任务的基准。最后,我们通过增强现实应用程序展示了算法的实用实用性,其中对象与我们的方法推断的已完成的重建交互。

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