利用日常生活中的活动模式识别智能手表用户的残差深度学习网络

IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Sakorn Mekruksavanich , Anuchit Jitpattanakul
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引用次数: 0

摘要

用户身份验证是智能手表安全的一个重要方面,可确保只有经过授权的人才能访问存储在设备上的敏感信息。密码和生物识别等传统方法有其局限性,如忘记密码的风险或生物识别数据被泄露的可能性。本研究提出了一种在智能手表上识别用户的新方法,即使用一种名为 Att-ResBiLSTM 的混合残差神经网络来分析活动模式。所提出的方法利用用户与智能手表互动的独特模式(包括应用程序使用、打字行为和运动传感器数据)来创建个性化的用户配置文件。该系统采用了专为可穿戴设备设计的深度学习网络,通过分析用户的活动模式,能够可靠、及时地识别用户。Att-ResBiLSTM 架构由三个关键部分组成:卷积层、ResBiLSTM 和注意力层。卷积层从预处理数据中提取空间特征。同时,ResBiLSTM 部分结合双向长短期记忆(BiLSTM)和残差连接的优势,捕捉时间序列数据中的长期依赖关系。注意力机制通过选择性地优先处理输入数据中信息量最大的元素来增强最终识别特征。Att-ResBiLSTM 模型是通过一个多样化的用户活动模式数据集进行训练和评估的。实验结果表明,所提出的方法在用户识别方面取得了显著的准确性,准确率达到 98.29%,最高 F1 分数为 98.24%。研究还进行了对比分析,以评估加速度计数据与陀螺仪数据的功效,结果表明结合两种传感器模式可提高用户识别性能。所提出的方法为智能手表的传统用户身份验证技术提供了一种可靠、用户友好的替代方法。这种方法利用活动模式和混合残差深度学习网络,为基于智能手表数据的用户识别提供了一种稳健高效的解决方案,从而提高了可穿戴设备的整体安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A residual deep learning network for smartwatch-based user identification using activity patterns in daily living

A residual deep learning network for smartwatch-based user identification using activity patterns in daily living
User identification is a critical aspect of smartwatch security, ensuring that only authorized individuals gain access to sensitive information stored on the device. Conventional methods like passwords and biometrics have limitations, such as the risk of forgetting passwords or the potential for biometric data to be compromised. This research proposes a novel approach for user identification on smartwatches by analyzing activity patterns using a hybrid residual neural network called Att-ResBiLSTM. The proposed method leverages unique patterns of user interactions with their smartwatches, including application usage, typing behavior, and motion sensor data, to create an individualized user profile. Employing a deep learning network specifically designed for wearable devices, the system can reliably and promptly identify users by analyzing their activity patterns. The Att-ResBiLSTM architecture comprises three key components: convolutional layers, ResBiLSTM, and an attention layer. The convolutional layers extract spatial features from the pre-processed data. At the same time, the ResBiLSTM component captures long-term dependencies in the time-series data by combining the advantages of bidirectional long short-term memory (BiLSTM) and residual connections. The attention mechanism enhances the final recognition features by selectively prioritizing the most informative elements of the input data. The Att-ResBiLSTM model is trained and evaluated using a diverse dataset of user activity patterns. Experimental results demonstrate that the proposed approach achieves remarkable accuracy in user identification, with an accuracy rate of 98.29% and the highest F1-score of 98.24%. The research also conducts a comparative analysis to assess the efficacy of accelerometer data versus gyroscope data, revealing that combining both sensor modalities improves user identification performance. The proposed methodology provides a reliable and user-friendly alternative to conventional user authentication techniques for smartwatches. This approach leverages activity patterns and a hybrid residual deep learning network to offer a robust and efficient solution for user identification based on smartwatch data, thereby enhancing the overall security of wearable devices.
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来源期刊
Computers & Electrical Engineering
Computers & Electrical Engineering 工程技术-工程:电子与电气
CiteScore
9.20
自引率
7.00%
发文量
661
审稿时长
47 days
期刊介绍: The impact of computers has nowhere been more revolutionary than in electrical engineering. The design, analysis, and operation of electrical and electronic systems are now dominated by computers, a transformation that has been motivated by the natural ease of interface between computers and electrical systems, and the promise of spectacular improvements in speed and efficiency. Published since 1973, Computers & Electrical Engineering provides rapid publication of topical research into the integration of computer technology and computational techniques with electrical and electronic systems. The journal publishes papers featuring novel implementations of computers and computational techniques in areas like signal and image processing, high-performance computing, parallel processing, and communications. Special attention will be paid to papers describing innovative architectures, algorithms, and software tools.
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