手写体识别系统的协同自适应

Sunsern Cheamanunkul, Y. Freund
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引用次数: 0

摘要

手写是一种自然而通用的人机交互方式,尤其是在智能手机等小型移动设备上。然而,由于笔迹因人而异,因此很难设计出适合所有用户的手写识别器。一个自然的解决方案是使用机器学习使识别器适应用户。一个复杂的因素是,随着计算机适应用户,用户也适应计算机,可能会改变他们的笔迹。本文研究了协同适应的动态过程,即计算机和用户都在调整自己的行为,以提高手写交流的速度和准确性。我们设计了一个信息论框架,用于量化手写系统的效率,其中系统包括用户和计算机。使用该框架,我们分析了自适应手写识别系统收集的数据,并表征了机器适应和人类适应的影响。我们发现机器自适应和人类自适应对输入率都有显著的影响,为了提高整个系统的效率,必须将两者结合起来考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Co-adaptation in a Handwriting Recognition System
Handwriting is a natural and versatile method for human-computer interaction, especially on small mobile devices such as smart phones. However, as handwriting varies significantly from person to person, it is difficult to design handwriting recognizers that perform well for all users. A natural solution is to use machine learning to adapt the recognizer to the user. One complicating factor is that, as the computer adapts to the user, the user also adapts to the computer and probably changes their handwriting. This paper investigates the dynamics of coadaptation, a process in which both the computer and the user are adapting their behaviors in order to improve the speed and accuracy of the communication through handwriting. We devised an information-theoretic framework for quantifying the efficiency of a handwriting system where the system includes both the user and the computer. Using this framework, we analyzed data collected from an adaptive handwriting recognition system and characterized the impact of machine adaptation and of human adaptation. We found that both machine adaptation and human adaptation have significant impact on the input rate and must be considered together in order to improve the efficiency of the system as a whole.
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