Vegetation detection for outdoor automobile guidance

Duong-Van Nguyen, L. Kuhnert, Tao Jiang, S. Thamke, K. Kuhnert
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引用次数: 28

Abstract

Recently, there are many autonomous navigation applications done in outdoor environment. However, safe navigation is still a daunting challenge in terrain containing vegetation. Thus, a study on vegetation detection for outdoor automobile navigation is investigated in this work. At the early state of our research, we focused on the segmentation of LADAR data into two classes by using local three-dimensional point cloud statistics. The classes are: scatter to represent vegetation such as tall grasses, bushes and tree canopy, surface to capture solid objects like ground surface, rocks or tree trunks. However, the only use of 3D features would never result a real robust vegetation detection system because of lacking color information. We, hence, propose a 2D-3D combination approach which can utilize the complement of three-dimensional point distribution and color descriptor. Firstly, 3D point cloud is segmented into regions of homogeneous distance. The local point distribution is then analyzed for each region to extract scatter features. Secondly, a coarse 2D-3D calibration needs to be implemented in order to map the regions to the corresponding color image. Then, color descriptors are studied and applied to each region and considered as color features. Those all scatter and color features will be trained by Support Vector Machine to generate vegetation classifier. Finally, we will show the out-performance of this approach in comparison with more conventional approaches.
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户外汽车导航植被检测
近年来,自主导航在室外环境下的应用越来越多。然而,在植被覆盖的地形中,安全导航仍然是一项艰巨的挑战。因此,本文对户外汽车导航中的植被检测进行了研究。在研究初期,我们主要是利用局部三维点云统计将LADAR数据分割为两类。这些类是:分散表示植被,如高大的草,灌木和树冠,表面捕获固体物体,如地面,岩石或树干。然而,由于缺乏颜色信息,仅使用3D特征无法产生真正鲁棒的植被检测系统。因此,我们提出了一种利用三维点分布和颜色描述符互补的2D-3D组合方法。首先,将三维点云分割成距离均匀的区域;然后分析每个区域的局部点分布,提取散点特征。其次,需要进行粗略的2D-3D校准,以便将这些区域映射到相应的彩色图像。然后,研究颜色描述符并将其应用于每个区域,并将其视为颜色特征。这些散点和颜色特征将被支持向量机训练生成植被分类器。最后,我们将展示与更传统的方法相比,这种方法的优越性能。
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