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Gender recognition using motion data from multiple smart devices

机译:使用来自多个智能设备的运动数据的性别识别

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摘要

Using multiple smart devices, such as smartphone and smartwatch simultaneously, is becoming a popular life style with the popularity of wearables. This multiple-sensor setting provides new opportunities for enhanced user trait analysis via multiple data fusion. In this study, we explore the task of gender recognition by using motion data collected from multiple smart devices. Specifically, motion data are collected from smartphone and smart band simultaneously. Motion features are extracted from the collected motion data according to three aspects: time, frequency, and wavelet domains. We present a feature selection method considering the redundancies between motion features. Gender recognition is performed using four supervised learning methods. Experimental results demonstrate that using motion data collected from multiple smart devices can significantly improve the accuracy of gender recognition. Evaluation of our method on a dataset of 56 subjects shows that it can reach an accuracy of 98.7% compared with the accuracies of 93.7% and 88.2% when using smartphone and smart band individually. (C) 2020 Elsevier Ltd. All rights reserved.
机译:同时使用智能手机和SmartWatch等多种智能设备,正在成为一种流行的生活方式,具有可穿戴物的普及。这种多传感器设置为通过多个数据融合提供了新的用户特征分析的新机会。在这项研究中,我们通过使用从多个智能设备收集的运动数据来探索性别识别的任务。具体地,同时从智能手机和智能频带收集运动数据。根据三个方面从收集的运动数据中提取运动特征:时间,频率和小波域。我们提出了一种考虑运动功能之间冗余的特征选择方法。使用四种监督学习方法进行性别识别。实验结果表明,使用从多个智能设备收集的运动数据可以显着提高性别识别的准确性。在56个科目的数据集中评估我们的方法表明,在单独使用智能手机和智能频段时,它可以达到98.7%的准确性为98.7%和88.2%。 (c)2020 elestvier有限公司保留所有权利。

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