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Estimating polynomial structures from radar data

机译:估算雷达数据的多项式结构

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Situation awareness for vehicular safety and autonomy functions includes knowledge of the drivable area. This area is normally constrained between stationary road-side objects as guard-rails, curbs, ditches and vegetation. We consider these as extended objects modeled by polynomials along the road, and propose an algorithm to track each polynomial based on noisy range and bearing detections, typically from a radar. A straightforward Kalman filter formulation of the problem suffers from the errors-in-variables (EIV) problem in that the noise enters the system model. We propose an EIV modification of the Kalman filter and demonstrates its usefulness using radar data from public roads.
机译:车辆安全和自主功能的情况意识包括可驱动区域的知识。该区域通常在静止路边物体之间被限制为护栏,路径,沟渠和植被。我们认为这些是由沿着道路的多项式建模的扩展对象,并提出一种算法,以基于噪声范围和轴承检测来跟踪每个多项式,通常来自雷达。一个简单的卡尔曼滤波器配方的出现遭受了变量错误(EIV)问题,因为噪声进入系统模型。我们提出了Kalman滤波器的EIV修改,并使用来自公共道路的雷达数据展示了其有用性。

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