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Computational Modeling of Touchscreen Drag Gestures Using a Cognitive Architecture and Motion Tracking

机译:使用认知架构和运动跟踪的触摸屏拖动手势的计算建模

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This article presents a computational model that predicts finger-drag gesture performance on touchscreen devices, by integrating the queueing network (QN) cognitive architecture and motion tracking. Specifically, the QN-based model was developed to predict two execution times: the finger movement time of drag-gesture (i.e., only the motion time of the finger touched and dragged on the surface of touchscreen) and the comprehensive process time of drag-gesture (i.e., the entire process time to complete the finger-drag task, including visual attention shift, memory storage and retrieval, and hand-finger movements). To develop predictive models for the finger movement time of drag-gesture, 11 participants' motion data were collected and a regression analysis with parameters of hand-finger anthropometric data and eight angular directions was conducted. Human subject data from our previous study (Jeong & Liu, 2017a) were used to evaluate the QN-based model, generating similar outputs (R-2 was more than 80% and root-mean square was less than 300 msec) for both execution times.
机译:本文通过集成排队网络(QN)认知体系结构和运动跟踪,提出了一种计算模型,该计算模型预测触摸屏设备上的手指拖动手势性能。具体地,开发了基于QN的模型以预测两个执行时间:拖动手势的手指移动时间(即,只有手指的运动时间触摸并拖动在触摸屏的表面上)和拖动的综合处理时间手势(即,完成手指拖动任务的整个过程时间,包括视觉注意换档,内存存储和检索,手指移动)。为了开发用于拖动手势的手指移动时间的预测模型,收集了11个参与者的运动数据,并进行了与手指人体测量数据和八个角度方向的参数的回归分析。来自我们以前的研究的人类主题数据(JEONG&LIU,2017A)用于评估基于QN的模型,产生类似的输出(R-2超过80%,根均线小于300毫秒)进行执行时代。

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