分支路径决策区域的统计确定:一种轮椅辅助应用算法

Kelilah L Wolkowicz, R. Leary, J. Moore, S. Brennan
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引用次数: 0

摘要

通常情况下,移动车辆重复沿着相同的路径行驶,从而形成一条有一定方差的公共路径。这些路径经常被分支打断,这些分支基于分支周围区域的决策而进入其他路径。这项工作应用统计方法来确定分支路径的决策区域。在该算法中定义了一条平均路径,以及表示路径方差的边界。每个分支路径的边界在决策点附近相交;这些路径方差的交集被用来确定路径分支的位置。结果分析提供的决策点对于典型的路径条件是健壮的,例如两条路径可能在特定位置不明显分叉。此外,该方法定义了决策区域半径,该半径包含了相对于分支路径的位置的统计成员关系。为了验证所提出的技术,将决策区域算法的离线实现应用于先前分类的轮椅路径子集。结果表明,鲁棒性检测的决策区域,直观地同意用户的决策在现实世界的路径跟随。对于本研究的实验情况,大约70%的路径位置在决策区域之外,因此可以在显著减少用户输入的情况下进行导航。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical Determination of Decision-Making Regions for Branching Paths: An Algorithm With a Wheelchair Assistance Application
Typically, mobile vehicles follow the same paths repeatedly, resulting in a common path bounded with some variance. These paths are often punctuated by branches into other paths based on decision-making in the area around the branch. This work applies a statistical methodology to determine decision-making regions for branching paths. An average path is defined in the proposed algorithm, as well as boundaries representing variances along the path. The boundaries along each branching path intersect near the decision point; these intersections in path variances are used to determine path-branching locations. The resulting analysis provides decision points that are robust to typical path conditions, such as two paths that may not clearly diverge at a specific location. Additionally, the methodology defines decision region radii that encompass statistical memberships of a location relative to the branching paths. To validate the proposed technique, an off-line implementation of the decision-making region algorithm is applied to previously classified wheelchair path subsets. Results show robust detection of decision regions that intuitively agree with user decision-making in real-world path following. For the experimental situation of this study, approximately 70% of path locations were outside of decision regions and thus could be navigated with a significant reduction in user inputs.
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