2018
DOI: 10.1049/iet-bmt.2018.5003
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Active detection of age groups based on touch interaction

Abstract: This article studies user classification into children and adults according to their interaction with touchscreen devices. The authors analyse the performance of two sets of features derived from the sigma-lognormal theory of rapid human movements and global characterisation of touchscreen interaction. The authors propose an active detection approach aimed to continuously monitor the user patterns. The experimentation is conducted on a publicly available database with samples obtained from 89 children between … Show more

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Cited by 29 publications
(20 citation statements)
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“…Mean velocity, max acceleration, distance between adjacent points or total duration are examples of these features. Global feature sets have been used to characterize handwriting signatures for many years with good performance [14] and, more recently, to characterize swipe patterns [15]. But they have never been studied to characterize PD, so in this paper we will analyze if they are suitable for this purpose.…”
Section: A Feature Extractionmentioning
confidence: 99%
“…Mean velocity, max acceleration, distance between adjacent points or total duration are examples of these features. Global feature sets have been used to characterize handwriting signatures for many years with good performance [14] and, more recently, to characterize swipe patterns [15]. But they have never been studied to characterize PD, so in this paper we will analyze if they are suitable for this purpose.…”
Section: A Feature Extractionmentioning
confidence: 99%
“…The authors in [144] 4.1.2 Touchscreen. In [9], the authors performed an analysis to identify whether the user using the device was a child or an adult based on swipe and tap gestures. For this purpose, an Active User Detection (AUD) algorithm has been used, achieving 97% accuracy.…”
Section: Demographicsmentioning
confidence: 99%
“…Most of the remaining studies consider the lognormal and other related distributions in a more general setting that includes not only keystroke dynamics but also touch-screen biometrics [27]. Going beyond authentication, [28] and [29] employ the sigma-lognormal model of rapid human movements to detect the age group of users based on their interaction with a touch screen, while [30] leverages different distributions to discriminate a human user from a bot. No other systematic comparison of distributions for the task of fitting keystroke timings histograms was found other than the aforementioned [21], [22], and [11 1.…”
Section: Previous Studiesmentioning
confidence: 99%