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SemanticFusion: Joint Labeling, Tracking and Mapping

机译:语法:联合标签,跟踪和映射

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Kick-started by deployment of the well-known KinectFusion, recent research on the task of RGBD-based dense volume reconstruction has focused on improving different shortcomings of the original algorithm. In this paper we tackle two of them: drift in the camera trajectory caused by the accumulation of small per-frame tracking errors and lack of semantic information within the output of the algorithm. Accordingly, we present an extended KinectFusion pipeline which takes into account per-pixel semantic labels gathered from the input frames. By such clues, we extend the memory structure holding the reconstructed environment so to store per-voxel information on the kinds of object likely to appear in each spatial location. We then take such information into account during the camera localization step to increase the accuracy in the estimated camera trajectory. Thus, we realize a SemanticFusion loop whereby per-frame labels help better track the camera and successful tracking enables to consolidate instantaneous semantic observations into a coherent volumetric map.
机译:通过部署众所周知的kinectfusion,最近的基于RGBD的密集体积重建任务的研究专注于改善原始算法的不同缺点。在本文中,我们解决了其中的两个:在算法输出中累积小的每帧跟踪误差和缺乏语义信息引起的相机轨迹漂移。因此,我们提出了一个扩展的KinectFusion管道,该管道考虑了从输入帧收集的每个像素语义标签。通过这样的线索,我们扩展了保持重建环境的存储器结构,以便存储对可能出现在每个空间位置的物体种类的每个体素信息。然后,我们在摄像机定位步骤期间考虑到此类信息,以提高估计的相机轨迹中的精度。因此,我们实现了一个语义难度循环,由此每帧标签有助于更好地跟踪相机,并且成功的跟踪能够将瞬时语义观察巩固到相干体积地图中。

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