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JRMOT: A Real-Time 3D Multi-Object Tracker and a New Large-Scale Dataset

机译:JRMOT:一个实时3D多目标跟踪器和一个新的大型数据集

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Robots navigating autonomously need to perceive and track the motion of objects and other agents in its surroundings. This information enables planning and executing robust and safe trajectories. To facilitate these processes, the motion should be perceived in 3D Cartesian space. However, most recent multi-object tracking (MOT) research has focused on tracking people and moving objects in 2D RGB video sequences. In this work we present JRMOT, a novel 3D MOT system that integrates information from RGB images and 3D point clouds to achieve real-time, state-of-the-art tracking performance. Our system is built with recent neural networks for re-identification, 2D and 3D detection and track description, combined into a joint probabilistic data-association framework within a multi-modal recursive Kalman architecture. As part of our work, we release the JRDB dataset, a novel large scale 2D+3D dataset and benchmark, annotated with over 2 million boxes and 3500 time consistent 2D+3D trajectories across 54 indoor and outdoor scenes. JRDB contains over 60 minutes of data including 360◦cylindrical RGB video and 3D pointclouds in social settings that we use to develop, train and evaluate JRMOT. The presented 3D MOT system demonstrates state-of-the-art performance against competing methods on the popular 2D tracking KITTI benchmark and serves as first 3D tracking solution for our benchmark. Real-robot tests on our social robot JackRabbot indicate that the system is capable of tracking multiple pedestrians fast and reliably. We provide the ROS code of our tracker at https://sites.google.com/view/jrmot
机译:机器人导航自主需要在周围环境中感知和跟踪物体和其他代理的运动。此信息使得能够规划和执行强大和安全的轨迹。为了促进这些过程,应在3D笛卡尔空间中感知运动。然而,最近的多目标跟踪(MOT)研究专注于跟踪人员和在2D RGB视频序列中移动对象。在这项工作中,我们呈现JRMOT,这是一个新的3D MOT系统,它集成了RGB图像和3D点云的信息,以实现实时,最先进的跟踪性能。我们的系统由最近的神经网络建立,用于重新识别,2D和3D检测和跟踪描述,组合到多模态递归卡尔曼架构中的联合概率数据关联框架中。作为我们工作的一部分,我们释放了JRDB数据集,这部小型大型2D + 3D数据集和基准标记,带有超过200万盒的盒子,3500次在54个室内和室外场景中的一致2D + 3D轨迹。 JRDB包含超过60分钟的数据,包括360Quarindrical RGB视频和3D PointClouds在社交环境中,我们用于开发,列车和评估JRMOT。所呈现的3D MOT系统展示了最先进的性能,反对流行的2D跟踪基蒂基准测试的竞争方法,并作为我们的基准测试的第一个3D跟踪解决方案。我们的社交机器人杰克拉布的真实机器人测试表明该系统能够快速可靠地跟踪多个行人。我们在https://sites.google.com/view/jrmot提供我们的跟踪器的ROS代码

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