Madapana Naveen, Gonzalez Glebys, Zhang Lingsong, Rodgers Richard, Wachs Juan
School of Industrial Engineering, Purdue University, Indiana, USA.
Department of Statistics, Purdue University, Indiana, USA.
IEEE Trans Hum Mach Syst. 2020 Oct;50(5):434-443. doi: 10.1109/THMS.2020.2992216. Epub 2020 Jun 1.
Choosing adequate gestures for touchless interfaces is a challenging task that has a direct impact on human-computer interaction. Such gestures are commonly determined by the designer, ad-hoc, rule-based or agreement-based methods. Previous approaches to assess agreement grouped the gestures into equivalence classes and ignored the integral properties that are shared between them. In this work, we propose a generalized framework that inherently incorporates the gesture descriptors into the agreement analysis (GDA). In contrast to previous approaches, we represent gestures using binary description vectors and allow them to be partially similar. In this context, we introduce a new metric referred to as Soft Agreement Rate ( ) to measure the level of agreement and provide a mathematical justification for this metric. Further, we performed computational experiments to study the behavior of and demonstrate that existing agreement metrics are a special case of our approach. Our method was evaluated and tested through a guessability study conducted with a group of neurosurgeons. Nevertheless, our formulation can be applied to any other user-elicitation study. Results show that the level of agreement obtained by is 2.64 times higher than the previous metrics. Finally, we show that our approach complements the existing agreement techniques by generating an artificial lexicon based on the most agreed properties.
为无接触界面选择合适的手势是一项具有挑战性的任务,它对人机交互有直接影响。此类手势通常由设计者通过临时、基于规则或基于协议的方法来确定。先前评估协议的方法将手势分组为等价类,并忽略了它们之间共享的整体属性。在这项工作中,我们提出了一个通用框架,该框架将手势描述符固有地纳入协议分析(GDA)中。与先前的方法不同,我们使用二进制描述向量来表示手势,并允许它们部分相似。在此背景下,我们引入了一种新的度量标准,称为软协议率( ),以测量协议水平,并为该度量标准提供数学依据。此外,我们进行了计算实验来研究 的行为,并证明现有的协议度量标准是我们方法的一种特殊情况。我们的方法通过对一组神经外科医生进行的可猜测性研究进行了评估和测试。然而,我们的公式可以应用于任何其他用户启发式研究。结果表明, 获得的协议水平比先前的度量标准高2.64倍。最后,我们表明,我们的方法通过基于最一致的属性生成人工词汇表来补充现有的协议技术。