Adult or Child: Recognizing through Touch Gestures on Smartphones

Osama Rasheed, A. Rextin, Mehwish Nasim
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引用次数: 1

Abstract

With the increasing popularity of smartphones and its audience including children as young as 2 year old, smartphones can be a hazard for young children in terms of health concerns, time wastage, viewing of inappropriate material and conversely children who are too young can be a threat to the smartphone as well e.g, causing battery drainage, making unwanted calls/text messages, doing physical damage etc. In order to protect the smartphone and children from each other, we require user identification on our devices so the device could perform certain functions for instance restricting adult content once a user is identified as a child. This paper is a user study that aims at detecting the touch patterns of adults and children. To this end we collected data from 60 people, 30 adults and 30 children while they were asked to perform the 6 basic tasks that are performed on touch devices to find the differences in the touch gestures of children from adults. We first perform an exploratory data analysis. We then model the problem as a supervised binary classification problem and use the data as input for different machine learning algorithms to find whether we can classify a user previously unknown to the machine as an adult or a child. Our work shows there are differences in touch gestures among children and adults which are sufficient for user group identification.
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成人或儿童:通过智能手机上的触摸手势识别
随着智能手机及其受众(包括2岁以下的儿童)的日益普及,智能手机在健康问题、浪费时间、观看不适当的材料方面对幼儿可能是一种危害,相反,年龄太小的儿童也可能对智能手机构成威胁,例如导致电池流失、拨打不必要的电话/短信、造成身体伤害等。为了保护智能手机和儿童,我们需要在我们的设备上进行用户识别,以便设备可以执行某些功能,例如,一旦用户被识别为儿童,设备就可以限制成人内容。本文是一项用户研究,旨在检测成人和儿童的触摸模式。为此,我们收集了60人的数据,30名成人和30名儿童,他们被要求在触摸设备上执行6项基本任务,以发现儿童和成人的触摸手势的差异。我们首先进行探索性数据分析。然后,我们将该问题建模为一个有监督的二元分类问题,并将数据作为不同机器学习算法的输入,以确定我们是否可以将机器之前未知的用户分类为成人或儿童。我们的研究表明,儿童和成人在触摸手势方面存在差异,这足以用于用户群体识别。
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