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Novel Design and Evaluation of Redirection Controllers Using Optimized Alignment and Artificial Potential Field.

IEEE transactions on visualization and computer graphics(2023)CCF ASCI 1区

Natl Yang Ming Chiao Tung Univ

Cited 5|Views13
Abstract
Redirected walking allows users to naturally locomote within virtual environments that are larger than or different in layout from the physically tracked space. In this paper, we proposed novel optimization-driven alignment-based and Artificial Potential Field (APF) redirected walking controllers, as well as an integrated version of the two. The first two controllers employ objective functions of one variable, which is the included angle between the user's heading vector and the target vector originating from the user's physical position. The optimized angle represents the physical cell that is best aligned with the virtual cell or the target vector on which the designated point has the minimum APF value. The derived optimized angle is used to finely set RDW gains. The two objective functions can be optimized simultaneously, leading to an integrated controller that is potentially able to take advantage of the alignment-based controller and APF-based controller. Through extensive simulation-based studies, we found that the proposed alignment-based and integrated controllers significantly outperform the state-of-the-art controllers and the proposed APF based controller in terms of the number of resets. Furthermore, the proposed alignment controller and integrated controller provide a more uniform likelihood distribution across distance between resets, as compared to the other controllers.
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Key words
Alignment,Artificial Potential Field,Redirected Walking,Virtual Reality
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要点】:本文提出了一种基于优化对齐和人工势场的新型重定向行走控制器,以及两者的集成版本,有效减少重定向行走中的重置次数,并提供了更均匀的重置距离分布。

方法】:研究采用优化驱动的目标函数,以用户行进方向向量与从用户物理位置出发的目标向量之间的夹角为单一变量,分别对基于对齐和人工势场的控制器进行优化。

实验】:通过广泛的基于模拟的研究,使用未明确提及的数据集,结果显示所提出的对齐基控制器和集成控制器在重置次数上显著优于现有先进控制器及单独的基于人工势场控制器,并在重置间的距离上提供了更均匀的概率分布。