Internet of Things data analytics for user authentication and activity recognition

Samera Batool, N. Saqib, M. Khan
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引用次数: 20

Abstract

In recent years Internet of Things has been among the hot topics of research in the field of computing and information technology. It has enabled thousands of connected devices including sensors, cell phones and daily home appliances to store data for various useful purposes. The amount of data generated by IoT devices is huge, and there is a need to analyze IoT data for prospective uses. Heterogeneity and the structure of IoT data make it a challenging task. This paper presents a frame work for IoT data analytics for creating models for user identification, user authentication and activity recognition. Focus of this study is on the data set of accelerometer sensor from internet of things perspectives to add an extra layer of security. The novelty of our approach lies in the customization of the data set, and the experiments performed for the construction of models for each individual activity and user. The dataset is collected from 19 different subjects of real world conditions performing basic activities, i.e. walking, sitting and standing. This data set is used for the authentication process without requiring any additional information. In existing studies, the results are obtained using more than one accelerometer sensor reading or a combination of gyroscope sensor and accelerometer sensor. Whereas we have used single sensing tri-axial sensor reading for activity recognition and user authentication models. These models are later verified by real time data sets which were not used in the training process. The results of the experiments show accuracy up to 93%. The results obtained by the experiments are also helpful for future research directions in the field of IoT data analytics, activity recognition and user authentication. By enhancing the accuracy and adding context aware aspects in the authentication models can lead to the significant advances in the biometric authentication process using IoT data.
用于用户认证和活动识别的物联网数据分析
近年来,物联网已成为计算与信息技术领域的研究热点之一。它使成千上万的连接设备,包括传感器、手机和日常家用电器,能够存储各种有用目的的数据。物联网设备产生的数据量是巨大的,需要分析物联网数据以供未来使用。物联网数据的异构性和结构使其成为一项具有挑战性的任务。本文提出了一个物联网数据分析框架,用于创建用户识别、用户认证和活动识别模型。本研究的重点是从物联网的角度对加速度计传感器的数据集进行研究,以增加额外的安全层。我们方法的新颖之处在于数据集的定制,以及为每个单独的活动和用户构建模型而进行的实验。该数据集收集自19个不同的对象,他们在现实世界条件下进行基本活动,即走路、坐着和站着。该数据集用于身份验证过程,不需要任何附加信息。在现有的研究中,使用多个加速度计传感器读取或陀螺仪传感器和加速度计传感器的组合来获得结果。然而,我们已经使用单感测三轴传感器读取活动识别和用户身份验证模型。这些模型随后通过在训练过程中未使用的实时数据集进行验证。实验结果表明,该方法的精度可达93%。实验结果也有助于未来物联网数据分析、活动识别和用户认证等领域的研究方向。通过在身份验证模型中提高准确性和添加上下文感知方面,可以在使用物联网数据的生物识别身份验证过程中取得重大进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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