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Spatio-temporal voxel layer: A view on robot perception for the dynamic world

机译:时空体素层:对动态世界的机器人感知的视图

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The spatio-temporal voxel grid is an actively maintained open-source project providing an improved three-dimensional environmental representation that has been garnering increased adoption in large, dynamic, and complex environments. We provide a voxel grid and the Costmap 2-D layer plug-in, Spatio-Temporal Voxel Layer, powered by a real-time sparse occupancy grid with constant time access to voxels which does not scale with the environment’s size. We replace ray-casting with a new clearing technique we dub frustum acceleration that does not assume a static environment and in practice, represents moving environments better. Our method operates at nearly 400% less CPU load on average while processing 9 QVGA resolution depth cameras as compared to the voxel layer. This technique also supports sensors such as three-dimensional laser scanners, radars, and additional modern sensors that were previously unsupported in the available ROS Navigation framework that has become staples in the roboticists’ toolbox. These sensors are becoming more widely used in robotics as sensor prices are driven down and mobile compute capabilities improve. The Spatio-Temporal Voxel Layer was developed in the open with community feedback over its development life cycle and continues to have additional features and capabilities added by the community. As of February 2019, the Spatio-Temporal Voxel Layer is being used on over 600 robots worldwide in warehouses, factories, hospitals, hotels, stores, and libraries. The open-source software can be viewed and installed on its GitHub page at https://github.com/SteveMacenski/spatio_temporal_voxel_layer.
机译:时空voxel网格是积极维护的开源项目,提供了一种改进的三维环境表示,这已经加强了大型,动态和复杂的环境的采用。我们提供了一种体素网格和CostMap 2-D层插件的时空voxel层,由实时稀疏占用网格供电,具有恒定的时间访问Voxels,其不会与环境尺寸缩放。我们用新的清算技术取代了光线铸造,我们将截然不懈的加速,不承担静态环境,在实践中,代表更好的移动环境。我们的方法平均地以近400%的CPU负载运行,同时处理9 QVGA分辨率与体素层相比的QVGA分辨率深度摄像头。该技术还支持传感器,如三维激光扫描仪,雷达和额外的现代传感器,以前在可用的ROS导航框架中未被支持,该框架已成为机器人工具箱中的钉书针。随着传感器价格被驱动下降和移动计算能力,这些传感器在机器人中越广泛使用。时空体素层是在开放的开放中开发的,在其开发生命周期中,继续拥有社区添加的其他功能和能力。截至2019年2月,在全球仓库,工厂,医院,酒店,商店和图书馆,在全球600多个机器人使用时空逆素层。可以在https://github.com/stevemacenski/spatio_temporal_voxel_layer上查看和安装开源软件。

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