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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Structure-aware indoor scene reconstruction via two levels of abstraction
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Structure-aware indoor scene reconstruction via two levels of abstraction

机译:通过两个抽象级别的结构感知室内场景重建

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In this paper, we propose a novel approach that reconstructs the indoor scene in a structure-aware manner and produces two meshes with different levels of abstraction. To be precise, we start from the raw triangular mesh of indoor scene and decompose it into two parts: structure and non-structure objects. On the one hand, structure objects are defined as significant permanent parts in the indoor environment such as floors, ceilings and walls. In the proposed algorithm, structure objects are abstracted by planar primitives and assembled into a polygonal structure mesh. This step produces a compact structure-aware watertight model that decreases the complexity of original mesh by three orders of magnitude. On the other hand, non-structure objects are movable objects in the indoor environment such as furniture and interior decoration. Meshes of these objects are repaired and simplified according to their relationship with respect to structure primitives. Finally, the union of all the non-structure meshes and structure mesh comprises the scene mesh. Note that structure mesh and scene mesh preserve various levels of abstraction and can be used for different applications according to user preference. Our experiments on both LIDAR and RGBD data scanned from simple to large scale indoor scenes indicate that the proposed framework generates structure-aware results while being robust and scalable. It is also compared qualitatively and quantitatively against popular mesh approximation, floorplan generation and piecewise-planar surface reconstruction methods to demonstrate its performance.
机译:在本文中,我们提出了一种以结构感知方式重建室内场景的新方法,并产生具有不同抽象层的两种网格。要精确,我们从室内场景的原始三角形网格开始,并将其分成两部分:结构和非结构对象。一方面,结构物体定义为室内环境中的重要永久部件,如地板,天花板和墙壁。在所提出的算法中,结构对象被平面基元提示并组装到多边形结构网中。该步骤产生了一种紧凑的结构感知水密模型,将原始网格的复杂性降低三个级。另一方面,非结构对象是室内环境中的可移动物体,如家具和室内装饰。根据其与结构基元的关系修复和简化这些物体的网格。最后,所有非结构网格和结构网格的联合包括场景网格。请注意,结构网格和场景网格保留各种抽象级别,并且可以根据用户偏好使用不同的应用程序。我们对LIDAR和RGBD数据的实验从简单到大规模的室内场景扫描,表明所提出的框架在稳健和可扩展的同时生成结构感知结果。它也是定性和定量地比较流行的网格近似,平面图生成和分段平面的表面重建方法来展示其性能。

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