Probabilistic pointing target prediction via inverse optimal control

Brian D. Ziebart, Anind Dey, J. Andrew Bagnell
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引用次数: 99

Abstract

Numerous interaction techniques have been developed that make "virtual" pointing at targets in graphical user interfaces easier than analogous physical pointing tasks by invoking target-based interface modifications. These pointing facilitation techniques crucially depend on methods for estimating the relevance of potential targets. Unfortunately, many of the simple methods employed to date are inaccurate in common settings with many selectable targets in close proximity. In this paper, we bring recent advances in statistical machine learning to bear on this underlying target relevance estimation problem. By framing past target-driven pointing trajectories as approximate solutions to well-studied control problems, we learn the probabilistic dynamics of pointing trajectories that enable more accurate predictions of intended targets.
基于逆最优控制的概率指向目标预测
已经开发了许多交互技术,通过调用基于目标的接口修改,使图形用户界面中的“虚拟”指向目标比类似的物理指向任务更容易。这些指向促进技术主要依赖于估计潜在目标相关性的方法。不幸的是,迄今为止采用的许多简单方法在许多可选择的近距离目标的常见设置中是不准确的。在本文中,我们引入了统计机器学习的最新进展来解决这个潜在的目标相关性估计问题。通过将过去的目标驱动的指向轨迹作为已得到充分研究的控制问题的近似解,我们了解了指向轨迹的概率动力学,从而能够更准确地预测预期目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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