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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Counting the number of words and lines read by fusing eye tracking and character recognition data: A Bayes factor approach
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Counting the number of words and lines read by fusing eye tracking and character recognition data: A Bayes factor approach

机译:计算通过融合眼跟踪和字符识别数据读取的单词和线路的数量:贝叶斯因子方法

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摘要

Counting the number of words and lines that a user reads is important for many educational purposes - e.g., the reading speed is a key factor to improve learning, intelligent systems can suggest text that must be read to achieve a determined learning objective. The eye tracking technology is commonly used to analyze the user reading habits. Counting the number of read words could be hard when the readings are obtained from imprecise eye tracking data - e.g., eye tracking calibration difficulties. Approaches that find patterns from saccades and fixations usually fail to solve the problem in such conditions. This paper introduces the Cowl approach, which deals with the imprecision problem by associating the eye tracking data with points obtained from character recognition. To detect text lines truly read, the problem is stated as one of merging two hypothetical lines and it is solved by a Bayesian approach. Tests show that the proposed approach shows high performance, reaching average precision rates up to 0.866 for recall 0.976 - in the case of text with different orientations.
机译:计算用户读取的单词和线条对许多教育目的很重要 - 例如,阅读速度是改善学习的关键因素,智能系统可以建议必须读取的文本以实现确定的学习目标。眼睛跟踪技术通常用于分析用户阅读习惯。当从不精确的眼睛跟踪数据获得读数时,计算读取词的数量可能很难 - 例如,眼睛跟踪校准困难。查找扫视和固定模式的方法通常无法解决这种情况下的问题。本文介绍了COWL方法,通过将眼跟踪数据与从字符识别所获得的点相关联来涉及不精确问题。为了检测真正读取的文本线,问题被称为合并两个假设线之一,并通过贝叶斯方法解决。测试表明,该方法显示出高性能,达到平均精度率,高达0.866的召回0.976 - 在具有不同方向的文本的情况下。

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