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Real-Time HD Map Change Detection for Crowdsourcing Update Based on Mid-to-High-End Sensors

机译:基于中高端传感器的众包更新的实时高清地图更改检测

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摘要

Continuous maintenance and real-time update of high-definition (HD) maps is a big challenge. With the development of autonomous driving, more and more vehicles are equipped with a variety of advanced sensors and a powerful computing platform. Based on mid-to-high-end sensors including an industry camera, a high-end Global Navigation Satellite System (GNSS)/Inertial Measurement Unit (IMU), and an onboard computing platform, a real-time HD map change detection method for crowdsourcing update is proposed in this paper. First, a mature commercial integrated navigation product is directly used to achieve a self-positioning accuracy of 20 cm on average. Second, an improved network based on BiSeNet is utilized for real-time semantic segmentation. It achieves the result of 83.9% IOU (Intersection over Union) on Nvidia Pegasus at 31 FPS. Third, a visual Simultaneous Localization and Mapping (SLAM) associated with pixel type information is performed to obtain the semantic point cloud data of features such as lane dividers, road markings, and other static objects. Finally, the semantic point cloud data is vectorized after denoising and clustering, and the results are matched with a pre-constructed HD map to confirm map elements that have not changed and generate new elements when appearing. The experiment conducted in Beijing shows that the method proposed is effective for crowdsourcing update of HD maps.
机译:高清(HD)地图的连续维护和实时更新是一个很大的挑战。随着自主驾驶的发展,越来越多的车辆配备了各种先进的传感器和强大的计算平台。基于中高端传感器,包括行业摄像头,高端全球导航卫星系统(GNSS)/惯性测量单元(IMU)和车载计算平台,实时高清地图改变检测方法本文提出了众包更新。首先,将成熟的商业集成导航产品直接用于平均​​达到20厘米的自定位精度。其次,利用基于Bisenet的改进网络进行实时语义分割。它在31 FPS下实现了NVIDIA PEGASUS的83.9%IOO(联盟交汇处)的结果。第三,执行与像素类型信息相关联的视觉同时定位和映射(SLAM)以获得诸如车道分隔器,道路标记和其他静态对象的特征的语义点云数据。最后,在去噪和聚类之后,语义点云数据被向量化,结果与预构造的高清映射匹配,以确认在出现时未改变和生成新元素的地图元素。在北京进行的实验表明,提出的方法对于众包的高清地图更新是有效的。

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