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Robust Curb Detection with Fusion of 3D-Lidar and Camera Data

机译:融合3D激光雷达和相机数据的鲁棒路缘检测

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Curb detection is an essential component of Autonomous Land Vehicles (ALV), especially important for safe driving in urban environments. In this paper, we propose a fusion-based curb detection method through exploiting 3D-Lidar and camera data. More specifically, we first fuse the sparse 3D-Lidar points and high-resolution camera images together to recover a dense depth image of the captured scene. Based on the recovered dense depth image, we propose a filter-based method to estimate the normal direction within the image. Then, by using the multi-scale normal patterns based on the curb's geometric property, curb point features fitting the patterns are detected in the normal image row by row. After that, we construct a Markov Chain to model the consistency of curb points which utilizes the continuous property of the curb, and thus the optimal curb path which links the curb points together can be efficiently estimated by dynamic programming. Finally, we perform post-processing operations to filter the outliers, parameterize the curbs and give the confidence scores on the detected curbs. Extensive evaluations clearly show that our proposed method can detect curbs with strong robustness at real-time speed for both static and dynamic scenes.
机译:路缘检测是自动驾驶陆地车辆(ALV)的重要组成部分,对于在城市环境中安全驾驶尤其重要。在本文中,我们通过利用3D-Lidar和相机数据提出了一种基于融合的路缘检测方法。更具体地说,我们首先将稀疏的3D-激光雷达点和高分辨率相机图像融合在一起,以恢复捕获场景的密集深度图像。基于恢复的密集深度图像,我们提出了一种基于滤波器的方法来估计图像中的法线方向。然后,通过使用基于路缘石几何特性的多尺度法线图案,可以在法线图像中逐行检测适合该图案的路缘点特征。此后,我们利用马尔可夫链来利用路缘石的连续特性对路缘石的一致性进行建模,从而可以通过动态编程有效地估计将路缘石连接在一起的最佳路缘石路径。最后,我们执行后处理操作以过滤异常值,对路缘石进行参数化并给出检测到的路缘石的置信度得分。广泛的评估清楚地表明,我们提出的方法可以在静态和动态场景下以实时速度检测具有强大鲁棒性的路缘石。

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