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Robust Recognition of Reading Activity in Transit Using Wearable Electrooculography

机译:使用可穿戴式电胶凝识别鲁莽识别转运中的阅读活动

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In this work we analyse the eye movements of people in transit in an everyday environment using a wearable electrooculographic (EOG) system. We compare three approaches for continuous recognition of reading activities: a string matching algorithm which exploits typical characteristics of reading signals, such as saccades and fixations; and two variants of Hidden Markov Models (HMMs) - mixed Gaussian and discrete. The recognition algorithms are evaluated in an experiment performed with eight subjects reading freely chosen text without pictures while sitting at a desk, standing, walking indoors and outdoors, and riding a tram. A total dataset of roughly 6 hours was collected with reading activity accounting for about half of the time. We were able to detect reading activities over all subjects with a top recognition rate of 80.2% (71.0% recall, 11.6% false positives) using string matching. We show that EOG is a potentially robust technique for reading recognition across a number of typical daily situations.
机译:在这项工作中,我们使用可穿戴电普切(EOG)系统分析了在日常环境中运输中的人们的眼球运动。我们比较三种方法来持续识别阅读活动:一种串匹配算法,用于利用读取信号的典型特性,例如扫视和固定;和隐马尔可夫模型(HMMS)的两种变种 - 混合高斯和离散。识别算法在用八个受试者进行的实验中进行评估,读取在桌子上的无图片,站在桌子上,站立,在室内和户外,乘坐电车。收集大约6小时的总数据集,阅读活动占账户约一半。我们能够使用字符串匹配来检测所有受试者的阅读活动,最高识别率为80.2%(71.0%召回,11.6%的误报)。我们表明EOG是一种用于在许多典型日常情况下阅读识别的潜在稳健的技术。

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