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Dense Depth Maps from Sparse Models and Image Coherence for Augmented Reality

机译:来自稀疏模型的密集深度映射和增强现实的图像一致性

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A convincing combination of virtual and real data in an Augmented Reality (AR) application requires detailed 3D information about the real world scene. In many situations extensive model data is not available, while sparse representations such as outlines on a map exist. In this paper, we present a novel approach using such sparse 3D model data to seed automatic image segmentation and infer a dense depth map of an environment. Sparse 3D models of known landmarks, such as points and lines from GIS databases, are projected into a registered image and initialize 2D image segmentation at the projected locations in the image. For the segmentation we propose different techniques, which combine shape information, semantics given by the database, and the visual appearance in the referenced image. The resulting depth information of objects in the scene can be used in many applications, including occlusion handling, label placement, and 3D modeling.
机译:在增强现实(AR)应用程序中,令人信服的虚拟和实际数据组合需要有关现实世界场景的详细3D信息。在许多情况下,广泛的模型数据不可用,而稀疏表示如地图上的轮廓存在。在本文中,我们介绍了一种使用这种稀疏3D模型数据来种子自动图像分割的新方法,并推断环境的密集深度图。已知地标(例如来自GIS数据库的点和线)的稀疏3D模型被投影到注册图像中,并在图像中的投影位置初始化2D图像分段。对于分段,我们提出了不同的技术,该技术组合了形状信息,数据库给出的语义,以及参考图像中的视觉外观。可以在许多应用中使用场景中的对象的所得到的深度信息,包括遮挡处理,标签放置和3D建模。

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