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A Clustering-Based Obstacle Segmentation Approach for Urban Environments

机译:基于聚类的城市环境障碍物分割方法

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The detection of obstacles is a fundamental issue in autonomous navigation, as it is the main key for collision prevention. This paper presents a method for the segmentation of general obstacles by stereo vision with no need of dense disparity maps or assumptions about the scenario. A sparse set of points is selected according to a local spatial condition and then clustered in function of its neighborhood, disparity values and a cost associated with the possibility of each point being part of an obstacle. The method was evaluated in hand-labeled images from KITTI object detection benchmark and the precision and recall metrics were calculated. The quantitative and qualitative results showed satisfactory in scenarios with different types of objects.
机译:障碍物的检测是自动导航的基本问题,因为它是防止碰撞的主要关键。本文提出了一种无需立体视差图或场景假设即可通过立体视觉对一般障碍物进行分割的方法。根据局部空间条件选择一组稀疏点,然后根据其邻域,视差值和与每个点可能成为障碍物的可能性相关的成本进行聚类。该方法在来自KITTI对象检测基准的手动标记图像中进行了评估,并计算了精确度和召回率指标。定量和定性结果在具有不同类型对象的场景中显示出令人满意的效果。

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