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On-Line Large Scale Semantic Fusion

机译:在线大规模语义融合

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Recent research towards 3D reconstruction has delivered reliable and fast pipelines to obtain accurate volumetric maps of large environments. Alongside, we witness dramatic improvements in the field of semantic segmentation of images due to deployment of deep learning architectures. In this paper, we pursue bridging the semantic gap of purely geometric representations by leveraging on a SLAM pipeline and a deep neural network so to endow surface patches with category labels. In particular, we present the first system that, based on the input stream provided by a commodity RGB-D sensor, can deliver interactively and automatically a map of a large scale environment featuring both geometric as well as semantic information. We also show how the significant computational cost inherent to deployment of a state-of-the-art deep network for semantic labeling does not hinder interactivity thanks to suitable scheduling of the workload on an off-the-shelf PC platform equipped with two GPUs.
机译:最近对3D重建的研究已经提供了可靠且快速的管道,以获取大型环境的准确体积图。同时,由于深度学习架构的部署,我们见证了图像语义分割领域的巨大进步。在本文中,我们通过利用SLAM管道和深层神经网络来为纯几何表示的语义鸿沟寻求桥梁,从而为表面补丁赋予类别标签。特别是,我们介绍了第一个系统,该系统基于商品RGB-D传感器提供的输入流,可以交互并自动提供具有几何和语义信息的大规模环境地图。我们还显示,由于在配备有两个GPU的现成PC平台上对工作负载进行了适当的调度,因此部署最新的深度网络进行语义标记所固有的显着计算成本不会阻碍交互性。

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