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Ego-Lane Estimation for Downtown Lane-Level Navigation

机译:市中心车道级导航的自我车道估计

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We present an ego-lane estimation algorithm for downtown lane-level navigation. It is capable of determining the currently used lane reliably, using sensors available in a modern production vehicle, such as odometry, GPS, visual lane-marking detection, and radar-based object detection. The method employs a particle filter with a novel step that combines the importance weight update and sampling. This step avoids performance deterioration in case of sparse particle sets even when the likelihood is very tight compared to the predicted particle set. Preprocessed odometry data allow for a further performance increase. In an extensive test in downtown scenarios on real roads with up to seven lanes, it achieves error probabilities below 1% in the 95th percentile at availabilities above 95%.
机译:我们为市中心的车道级导航提供了一种自我车道估计算法。它能够可靠地确定当前使用的车道,使用现代生产车辆中提供的传感器,例如OCOMOTRY,GPS,视觉车道标记检测和基于雷达的物体检测。该方法采用具有新颖的步骤的粒子滤波器,该步骤结合了重要性重量更新和采样。即使与预测颗粒集相比,稀疏颗粒的情况下,该步骤也避免了在稀疏粒子的情况下的性能劣化。预处理的内径仪数据允许进一步的性能增加。在最多可达七个车道的真正道路上的市中心方案的广泛考验中,它在95百分位数以上的95百分位数达到1%的误差概率低于95%。

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