高斯混合模型的概率轨迹预测

J. Wiest, M. Höffken, U. Kressel, K. Dietmayer
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引用次数: 279

摘要

在驾驶员辅助的背景下,准确可靠的车辆轨迹预测是有益的。这既可以增加舒适系统的灵活性,也可以在更有趣的情况下,尽早发现潜在的危险情况。在本文中,提出了一种新的弹道预测方法,能够提前几秒预测飞行器的轨迹,即所谓的长期预测。为了实现这一点,使用先前观察到的运动模式来推断联合概率分布作为运动模型。利用这种分布,可以根据当前观察到的历史运动模式,通过计算未来运动的概率来预测轨迹。概率建模的优点是,结果不仅是预测,而且是未来轨迹的整体分布,并且可以通过评估统计特性(例如,该条件分布的平均值)来进行具体预测。此外,方差的评估可以用来检验预测的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probabilistic trajectory prediction with Gaussian mixture models
In the context of driver assistance, an accurate and reliable prediction of the vehicle's trajectory is beneficial. This can be useful either to increase the flexibility of comfort systems or, in the more interesting case, to detect potentially dangerous situations as early as possible. In this contribution, a novel approach for trajectory prediction is proposed which has the capability to predict the vehicle's trajectory several seconds in advance, the so called long-term prediction. To achieve this, previously observed motion patterns are used to infer a joint probability distribution as motion model. Using this distribution, a trajectory can be predicted by calculating the probability for the future motion, conditioned on the current observed history motion pattern. The advantage of the probabilistic modeling is that the result is not only a prediction, but rather a whole distribution over the future trajectories and a specific prediction can be made by the evaluation of the statistical properties, e.g. the mean of this conditioned distribution. Additionally, an evaluation of the variance can be used to examine the reliability of the prediction.
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