KeyTime:超精确的预测笔画手势的产生时间

Luis A. Leiva, Daniel Martín-Albo, R. Plamondon, Radu-Daniel Vatavu
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引用次数: 23

摘要

我们介绍KeyTime,一种新技术和配套软件,用于预测用户在触摸屏上表达的笔触手势的产生时间。KeyTime采用运动学理论的原理和概念,如笔划手势的速度曲线的对数正态建模,以比现有方法更准确地估计手势生产时间。我们在几个公共数据集上获得的实验结果表明,KeyTime预测与r=相关的用户无关的生产时间。在预测时间量级上的平均误差比目前最好的预测技术CLC所提供的误差小3到6倍。此外,KeyTime报告了广泛的有用统计数据,如修剪平均值、中位数、标准偏差和置信区间,为从业者提供了前所未有的准确性和复杂性,以表征用户使用笔划手势输入的先验时间表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KeyTime: Super-Accurate Prediction of Stroke Gesture Production Times
We introduce KeyTime, a new technique and accompanying software for predicting the production times of users' stroke gestures articulated on touchscreens. KeyTime employs the principles and concepts of the Kinematic Theory, such as lognormal modeling of stroke gestures' velocity profiles, to estimate gesture production times significantly more accurately than existing approaches. Our experimental results obtained on several public datasets show that KeyTime predicts user-independent production times that correlate r=.99 with groundtruth from just one example of a gesture articulation, while delivering an average error in the predicted time magnitude that is 3 to 6 times smaller than that delivered by CLC, the best prediction technique up to date. Moreover, KeyTime reports a wide range of useful statistics, such as the trimmed mean, median, standard deviation, and confidence intervals, providing practitioners with unprecedented levels of accuracy and sophistication to characterize their users' a priori time performance with stroke gesture input.
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