Retargetable AR: Context-aware Augmented Reality in Indoor Scenes based on 3D Scene Graph

Tomu Tahara, Takashi Seno, Gaku Narita, T. Ishikawa
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引用次数: 27

Abstract

We present Retargetable AR—a novel AR framework that yields an AR experience that is aware of scene contexts set in various real environments, achieving natural interaction between the virtual and real worlds. We characterize scene contexts with relationships among objects in 3D space. A context assumed by an AR content and a context formed by a real environment where users experience AR are represented as abstract graph representations, i.e. scene graphs. From RGB-D streams, our framework generates a volumetric map in which geometric and semantic information of a scene are integrated. Moreover, using the semantic map, we abstract scene objects as oriented bounding boxes and estimate their orientations. Then our framework constructs, in an online fashion, a 3D scene graph characterizing the context of a real environment for AR. The correspondence between the constructed graph and an AR scene graph denoting the context of AR content provides a semantically registered content arrangement, which facilitates natural interaction between the virtual and real worlds. We performed extensive evaluations on our prototype system through quantitative evaluation of the performance of the oriented bounding box estimation, subjective evaluation of the AR content arrangement based on constructed 3D scene graphs, and an online AR demonstration.
可重定向AR:基于3D场景图的室内场景环境感知增强现实
我们提出了Retargetable AR,这是一种新的AR框架,可以产生感知各种真实环境中设置的场景上下文的AR体验,实现虚拟世界和现实世界之间的自然交互。我们用3D空间中物体之间的关系来描述场景上下文。AR内容所假定的上下文和用户体验AR的真实环境所形成的上下文被表示为抽象的图形表示,即场景图。从RGB-D流中,我们的框架生成一个体积图,其中集成了场景的几何和语义信息。此外,利用语义映射,我们将场景对象抽象为有方向的边界框,并估计它们的方向。然后,我们的框架以在线方式构建了一个表征AR真实环境上下文的3D场景图。所构建的图与表示AR内容上下文的AR场景图之间的对应关系提供了语义注册的内容安排,从而促进了虚拟世界和现实世界之间的自然交互。我们对原型系统进行了广泛的评估,包括定量评估定向边界盒估计的性能,基于构建的3D场景图对AR内容安排的主观评估,以及在线AR演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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