意向驱动运动的时空GP模型学习

Zonglin Hou, Linfeng Xu, Bingyang Fu
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引用次数: 0

摘要

现实世界中的大多数人类活动和物体运动都是由意图驱动的。利用意图信息(如目标和目的地)通常可以产生更好的运动模型和更准确的轨迹预测。与传统的状态空间模型相比,基于高斯过程(GP)的模型具有更强的描述复杂运动的能力。本文提出了一种基于GP回归的意图驱动运动模型学习和轨迹预测方法。首先,结合已知的运动意图设计条件核,进而构造意图驱动运动的GP模型。然后,根据数据流在线学习目标到达时间作为条件核GP模型的关键参数。最后,以导弹跟踪为背景,进行了数值仿真,验证了所提GP模型的有效性及其超参数对意图驱动运动的自学习能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatio-Temporal GP Model Learning for Intention-Driven Motions
Most human activities and object motions in the real world are intention-driven. Taking advantage of the intention information (e.g., goals and destinations) can produce better motion models and more accurate trajectory prediction in general. Again, compared with the traditional state space models, Gaussian process (GP) based models have more capability to de-scribe complicated motions. This paper proposes a GP regression based approach to model learning and trajectory prediction for intention-driven motions. At first, the conditional kernels are devised by incorporating the known motion intent, from which it follows that the GP models of intention-driven motions are constructed. Then, the times at which the destination is reached, as key parameters for GP models with conditional kernels, are learned online based on the data stream. Finally, in the context of missile tracking, numerical simulations are provided to show the effectiveness of the proposed GP models and the self-learning ability of their hyper parameters for intention-driven motions.
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