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Probabilistic Modeling of Traffic Lanes from GPS Traces

机译:GPS迹线对行车线的概率建模

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摘要

Instead of traditional ways of creating road maps, an attractive alternative is to create a map based on GPS traces of regular drivers. One important aspect of this approach is to automatically compute the number and locations of driving lanes on a road. We introduce the idea of using a Gaussian mixture model (GMM) to model the distribution of GPS traces across multiple traffic lanes. The GMM naturally accounts for the inherent spread in GPS data. We present a new variation of the GMM that enforces constant lane width and GPS variance in each lane. For fitting the GMM, we also introduce a new regularizer that is sensitive to the overall spread of the GPS data across the road. Our experiments on real GPS data show that our new GMM is better at counting lanes than a more traditional GMM, and it gives more consistent results across our data set.
机译:替代传统的创建路线图的方法,一种有吸引力的替代方法是基于常规驾驶员的GPS轨迹创建地图。这种方法的一个重要方面是自动计算道路上行驶车道的数量和位置。我们介绍了使用高斯混合模型(GMM)对跨多个行车线的GPS轨迹分布进行建模的想法。 GMM自然地解释了GPS数据的固有传播。我们提出了一种新的GMM变体,它强制每个车道保持恒定的车道宽度和GPS变化。为了拟合GMM,我们还引入了一个新的调节器,该调节器对GPS数据在道路上的整体分布很敏感。我们在真实GPS数据上进行的实验表明,与更传统的GMM相比,我们的新GMM在行车道计数方面更胜一筹,并且在我们的数据集中提供了更加一致的结果。

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