Onyekpe Uche, Palade Vasile, Kanarachos Stratis, Szkolnik Alicja
Institute for Future Transport and Cities, Coventry University, Coventry, United Kingdom.
Research Center for Data Science, Coventry University, Coventry, United Kingdom.
Data Brief. 2021 Feb 15;35:106885. doi: 10.1016/j.dib.2021.106885. eCollection 2021 Apr.
Low-cost Inertial Navigation Sensors (INS) can be exploited for a reliable solution for tracking autonomous vehicles in the absence of GPS signals. However, position errors grow exponentially over time due to noises in the sensor measurements. The lack of a public and robust benchmark dataset has however hindered the advancement in the research, comparison and adoption of recent machine learning techniques such as deep learning techniques to learn the error in the INS for a more accurate positioning of the vehicle. In order to facilitate the benchmarking, fast development and evaluation of positioning algorithms, we therefore present the first of its kind large-scale and information-rich inertial and odometry focused public dataset called IO-VNBD (nertial dometry ehicle avigation enchmark ataset). The vehicle tracking dataset was recorded using a research vehicle equipped with ego-motion sensors on public roads in the United Kingdom, Nigeria, and France. The sensors include a GPS receiver, inertial navigation sensors, wheel-speed sensors amongst other sensors found in the car, as well as the inertial navigation sensors and GPS receiver in an Android smart phone sampling at 10 Hz. A diverse number of driving scenarios were captured such as traffic congestion, round-abouts, hard-braking, etc. on different road types (e.g. country roads, motorways, etc.) and with varying driving patterns. The dataset consists of a total driving time of about 40 h over 1,300 km for the vehicle extracted data and about 58 h over 4,400 km for the smartphone recorded data. We hope that this dataset will prove valuable in furthering research on the correlation between vehicle dynamics and dependable positioning estimation based on vehicle ego-motion sensors, as well as other related studies.
低成本惯性导航传感器(INS)可用于在没有GPS信号的情况下为跟踪自动驾驶车辆提供可靠的解决方案。然而,由于传感器测量中的噪声,位置误差会随时间呈指数增长。然而,缺乏公开且强大的基准数据集阻碍了诸如深度学习技术等最新机器学习技术在研究、比较和采用方面的进展,这些技术旨在学习INS中的误差以实现车辆更精确的定位。为了便于对定位算法进行基准测试、快速开发和评估,我们因此推出了首个大规模且信息丰富的、以惯性和里程计为重点的公共数据集,称为IO-VNBD(惯性里程计车辆导航基准数据集)。该车辆跟踪数据集是使用一辆配备了自运动传感器的研究车辆在英国、尼日利亚和法国的公共道路上记录的。这些传感器包括GPS接收器、惯性导航传感器、轮速传感器以及汽车中发现的其他传感器,还有一部以10Hz采样的安卓智能手机中的惯性导航传感器和GPS接收器。记录了各种不同的驾驶场景,如交通拥堵、环岛、急刹车等,涵盖不同的道路类型(如乡村道路、高速公路等)以及不同的驾驶模式。该数据集包含车辆提取数据的总行驶时间约40小时,行驶里程1300公里,以及智能手机记录数据的总行驶时间约58小时,行驶里程4400公里。我们希望这个数据集将在推进基于车辆自运动传感器的车辆动力学与可靠定位估计之间的相关性研究以及其他相关研究方面证明具有价值。