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Probabilistic representation of the uncertainty of stereo-vision and application to obstacle detection

机译:立体视觉不确定性的概率表示及其在障碍物检测中的应用

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Stereo-vision is extensively used for intelligent vehicles, mainly for obstacle detection, as it provides a large amount of data. Many authors use it as a classical 3D sensor which provides a large tri-dimensional cloud of metric measurements, and apply methods usually designed for other sensors, such as clustering based on a distance. For stereo-vision, the measurement uncertainty is related to the range. For medium to long range, often necessary in the field of intelligent vehicles, this uncertainty has a significant impact, limiting the use of this kind of approaches. On the other hand, some authors consider stereo-vision more like a vision sensor and choose to directly work in the disparity space. This provides the ability to exploit the connectivity of the measurements, but roughly takes into consideration the actual size of the objects. In this paper, we propose a probabilistic representation of the specific uncertainty for stereo-vision, which takes advantage of both aspects - distance and disparity. The model is presented and then applied to obstacle detection, using the occupancy grid framework. For this purpose, a computationally-efficient implementation based on the u-disparity approach is given.
机译:立体视觉由于其提供大量数据,因此广泛用于智能车辆,主要用于障碍物检测。许多作者将其用作经典的3D传感器,该传感器可提供大量的三维度量度量云,并应用通常为其他传感器设计的方法,例如基于距离的聚类。对于立体视觉,测量不确定度与范围有关。对于智能汽车领域中经常需要的中至远程,这种不确定性会产生重大影响,从而限制了这种方法的使用。另一方面,一些作者认为立体视觉更像是视觉传感器,因此选择直接在视差空间中工作。这提供了利用测量的连通性的能力,但大致考虑了对象的实际大小。在本文中,我们提出了立体视觉特定不确定性的概率表示,它利用了距离和视差这两个方面的优势。提出了该模型,然后使用占用网格框架将其应用于障碍物检测。为此,给出了一种基于u视差方法的高效计算实现。

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