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Eye movement analysis for activity recognition

机译:眼动分析以识别活动

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In this work we investigate eye movement analysis as a new modality for recognising human activity. We devise 90 different features based on the main eye movement characteristics: saccades, fixations and blinks. The features are derived from eye movement data recorded using a wearable electrooculographic (EOG) system. We describe a recognition methodology that combines minimum redundancy maximum relevance feature selection (mRMR) with a support vector machine (SVM) classifier. We validate the method in an eight participant study in an office environment using five activity classes: copying a text, reading a printed paper, taking hand-written notes, watching a video and browsing the web. In addition, we include periods with no specific activity. Using a person-independent (leave-one-out) training scheme, we obtain an average precision of 76.1% and recall of 70.5% over all classes and participants. We discuss the most relevant features and show that eye movement analysis is a rich and thus promising modality for activity recognition.
机译:在这项工作中,我们将眼动分析作为一种识别人类活动的新方式进行了调查。我们根据主要的眼动特征设计了90种不同的功能:扫视,注视和眨眼。这些特征来自使用可穿戴式眼动仪(EOG)系统记录的眼动数据。我们描述了一种识别方法,该方法结合了最小冗余最大相关特征选择(mRMR)与支持向量机(SVM)分类器。我们在办公室环境中使用五项活动类别对八名参与者进行了研究,验证了该方法:复制文本,阅读印刷纸,做手写笔记,观看视频和浏览网络。此外,我们包括没有特定活动的期间。使用独立于人(一劳永逸)的培训方案,我们在所有班级和参与者中的平均准确率均为76.1%,召回率为70.5%。我们讨论了最相关的功能,并表明眼动分析是一种丰富的活动识别方式,因此很有希望。

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