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Urban@CRAS dataset: Benchmarking of visual odometry and SLAM techniques

机译:城市@ CRAS DataSet:视觉测量和SLAM技术的基准测试

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Public datasets are becoming extremely important for the scientific and industrial community to accelerate the development of new approaches and to guarantee identical testing conditions for comparing methods proposed by different researchers. This research presents the Urban@CRAS dataset that captures several scenarios of one iconic region at Porto Portugal These scenario presents a multiplicity of conditions and urban situations including, vehicle-to-vehicle and vehicle-to-human interactions, cross-sides, turn-around, roundabouts and different traffic conditions. Data from these scenarios are timestamped, calibrated and acquired at 10 to 200 Hz by through a set of heterogeneous sensors installed in a roof of a car. These sensors include a 3D LIDAR, high-resolution color cameras, a high-precision IMU and a GPS navigation system. In addition, positioning information obtained from a real-time kinematic satellite navigation system (with 0.05m of error) is also included as ground-truth. Moreover, a benchmarking process for some typical methods for visual odometry and SLAM is also included in this research, where qualitative and quantitative performance indicators are used to discuss the advantages and particularities of each implementation. Thus, this research fosters new advances on the perception and navigation approaches of autonomous robots (and driving). (C) 2018 Elsevier B.V. All rights reserved.
机译:公共数据集对科学和工业界非常重要,以加快新方法的发展,并保证与不同研究人员提出的方法的相同测试条件。本研究介绍了城市@ CRAS DataSet,捕获葡萄牙波尔图葡萄牙一个标志性地区的几个情景这些方案呈现了多种条件和城市情况,包括车辆到车辆和人类的相互作用,横梁,转向 - 周围,​​环形交叉路口和不同的交通状况。来自这些方案的数据是通过安装在汽车屋顶上的一组异质传感器的时间戳,校准和在10到200 Hz上获取。这些传感器包括3D LIDAR,高分辨率彩色摄像机,高精度IMU和GPS导航系统。此外,从实时运动卫星导航系统(具有0.05米的错误)获得的定位信息也是基本真理。此外,该研究还包括用于一些典型的视觉测距和SLAM方法的基准方法,其中定性和定量的性能指标用于讨论每个实施的优点和特性。因此,这项研究促进了自主机器人(和驾驶)的感知和导航方法的新进展。 (c)2018 Elsevier B.v.保留所有权利。

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