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Stochastic performance, modeling and evaluation of obstacle detectability with imaging range sensors

机译:成像范围传感器的随机性能,障碍物可探测性的建模和评估

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摘要

Statistical modeling and evaluation of the performance of obstacle detection systems for unmanned ground vehicles (UGV's) is essential for the design, evaluation and comparison of sensor systems. In this report, we address this issue for imaging range sensors by dividing the evaluation problem into two levels: quality of the range data itself and quality of the obstacle detection algorithms applied to the range data. We review existing models of the quality of range data from stereo vision and AM-CW LADAR, then use these to derive a new model for the quality of a simple obstacle detection algorithm. This model predicts the probability of detecting obstacles and the probability of false alarms, as a function of the size and distance of the obstacle, the resolution of the sensor, and the level of noise in the range data. We evaluate these models experimentally using range data from stereo image pairs of a gravel road with known obstacles at several distances. The results show that the approach is a promising tool for predicting and evaluating the performance of obstacle detection with imaging range.
机译:对无人地面车辆(UGV)的障碍物检测系统的性能进行统计建模和评估对于传感器系统的设计,评估和比较至关重要。在本报告中,我们通过将评估问题分为两个级别来解决成像距离传感器的问题:距离数据本身的质量和应用于距离数据的障碍物检测算法的质量。我们回顾了现有的立体视觉和AM-CW LADAR测距数据质量模型,然后使用这些模型推导了一种简单障碍物检测算法质量的新模型。该模型根据障碍物的大小和距离,传感器的分辨率以及距离数据中的噪声水平,预测检测到障碍物的可能性和错误警报的可能性。我们使用具有已知障碍物的碎石路的立体图像对在几个距离上的距离数据,通过实验数据对这些模型进行评估。结果表明,该方法是一种有前景的工具,可以预测和评估具有成像范围的障碍物检测性能。

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