CurbScan: Curb Detection and Tracking Using Multi-Sensor Fusion

Iljoo Baek, Tzu Chieh Tai, Manoj Bhat, Karun Ellango, Tarang Shah, Kamal Fuseini, R. Rajkumar
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引用次数: 7

Abstract

Reliable curb detection is critical for safe autonomous driving in urban contexts. Curb detection and tracking are also useful in vehicle localization and path planning. Past work utilized a 3D LiDAR sensor to determine accurate distance information and the geometric attributes of curbs. However, such an approach requires dense point cloud data and is also vulnerable to false positives from obstacles present on both road and off-road areas. In this paper, we propose an approach to detect and track curbs by fusing together data from multiple sensors: sparse LiDAR data, a mono camera and low-cost ultrasonic sensors. The detection algorithm is based on a single 3D LiDAR and a mono camera sensor used to detect candidate curb features and it effectively removes false positives arising from surrounding static and moving obstacles. The detection accuracy of the tracking algorithm is boosted by using Kalman filter-based prediction and fusion with lateral distance information from low-cost ultrasonic sensors. We next propose a line-fitting algorithm that yields robust results for curb locations. Finally, we demonstrate the practical feasibility of our solution by testing in different road environments and evaluating our implementation in a real vehicle1. Our algorithm maintains over 90% accuracy within 4.5-22 meters and 0-14 meters for the KITTI dataset and our dataset respectively, and its average processing time per frame is approximately 10 ms on Intel i7 x86 and 100ms on NVIDIA Xavier board.
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CurbScan:使用多传感器融合的路边检测和跟踪
可靠的路缘检测对于城市环境下的安全自动驾驶至关重要。路边检测和跟踪在车辆定位和路径规划中也很有用。过去的工作使用3D激光雷达传感器来确定精确的距离信息和路缘的几何属性。然而,这种方法需要密集的点云数据,并且容易受到道路和非道路区域障碍物的误报。在本文中,我们提出了一种通过融合来自多个传感器的数据来检测和跟踪路沿的方法:稀疏激光雷达数据、单摄像头和低成本超声波传感器。该检测算法基于单个3D激光雷达和单个相机传感器,用于检测候选路缘特征,并有效消除周围静态和移动障碍物产生的误报。利用基于卡尔曼滤波的预测和融合低成本超声传感器的横向距离信息,提高了跟踪算法的检测精度。接下来,我们提出了一种线拟合算法,该算法对路边位置产生稳健的结果。最后,我们通过在不同道路环境下的测试和在真实车辆上的评估来证明我们的解决方案的实际可行性。对于KITTI数据集和我们的数据集,我们的算法分别在4.5-22米和0-14米范围内保持了90%以上的准确率,其平均每帧处理时间在Intel i7 x86上约为10 ms,在NVIDIA Xavier主板上约为100ms。
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