Deepthi S, Mamatha Balachandra, P. K V, K. Yau, Abhishek A K
{"title":"在智能小工具中使用行为生物识别技术和机器学习技术进行持续的用户身份验证","authors":"Deepthi S, Mamatha Balachandra, P. K V, K. Yau, Abhishek A K","doi":"10.53759/7669/jmc202404059","DOIUrl":null,"url":null,"abstract":"In the ever-evolving realm of technology, the identification of human activities using intelligent devices such as smartwatches, fitness bands, and smartphones has emerged as a crucial area of study. These devices, equipped with inertial sensors, gather a wealth of data and provide insights into users' movements and behaviors. These data not only serve practical purposes, but also hold significant implications for domains such as healthcare and fitness tracking. Traditionally, these devices have been employed to monitor various health metrics such as step counts, calorie expenditure, and real-time blood pressure monitoring. However, recent research has shifted its focus to leveraging the data collected by these sensors for user authentication purposes. This innovative approach involves the utilization of Machine Learning (ML) models to analyze the routine data captured by sensors in smart devices employing ML algorithms, which can recognize and authenticate users based on their unique movement patterns and behaviors. This introduces a paradigm shift from traditional one-time authentication methods to continuous authentication, adding an extra layer of security to protect users against potential threats. Continuous authentication offers several advantages over its conventional counterparts. First, it enhances security by constantly verifying a user's identity through their interaction with the device, thereby mitigating the risk of unauthorized access. Second, it provides a seamless and nonintrusive user experience, eliminating the need for repetitive authentication prompts. Moreover, it offers robust protection against various threats such as identity theft, unauthorized access, and device tampering. The application of continuous authentication extends beyond individual devices and encompasses interconnected systems and networks. This holistic approach ensures a comprehensive security across digital platforms and services. The experiments demonstrate that the logistic regression model achieves an accuracy of 82.32% on the test dataset, highlighting its robustness for binary classification tasks. Additionally, the random forest model outperforms with a 92.18% accuracy, emphasizing its superior capability in handling complex feature interactions. In the study, the sequential neural network achieved an accuracy of 92% on the HAR dataset, outperforming traditional machine learning models by a significant margin. The model also demonstrated robust generalization capabilities with a minimal drop in performance across various cross-validation folds.","PeriodicalId":516151,"journal":{"name":"Journal of Machine and Computing","volume":" 9","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Using Behavioural Biometrics and Machine Learning in Smart Gadgets for Continuous User Authentication Purposes\",\"authors\":\"Deepthi S, Mamatha Balachandra, P. K V, K. Yau, Abhishek A K\",\"doi\":\"10.53759/7669/jmc202404059\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"In the ever-evolving realm of technology, the identification of human activities using intelligent devices such as smartwatches, fitness bands, and smartphones has emerged as a crucial area of study. 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This introduces a paradigm shift from traditional one-time authentication methods to continuous authentication, adding an extra layer of security to protect users against potential threats. Continuous authentication offers several advantages over its conventional counterparts. First, it enhances security by constantly verifying a user's identity through their interaction with the device, thereby mitigating the risk of unauthorized access. Second, it provides a seamless and nonintrusive user experience, eliminating the need for repetitive authentication prompts. Moreover, it offers robust protection against various threats such as identity theft, unauthorized access, and device tampering. The application of continuous authentication extends beyond individual devices and encompasses interconnected systems and networks. This holistic approach ensures a comprehensive security across digital platforms and services. 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引用次数: 0
摘要
在不断发展的技术领域,利用智能手表、健身手环和智能手机等智能设备识别人类活动已成为一个重要的研究领域。这些设备配备了惯性传感器,可收集大量数据,深入了解用户的动作和行为。这些数据不仅具有实用价值,而且对医疗保健和健身追踪等领域具有重要意义。传统上,这些设备用于监测各种健康指标,如步数、卡路里消耗和实时血压监测。不过,最近的研究已将重点转向利用这些传感器收集的数据进行用户身份验证。这种创新方法涉及利用机器学习(ML)模型,采用 ML 算法分析智能设备中传感器捕获的常规数据,从而根据用户独特的运动模式和行为对其进行识别和身份验证。这就实现了从传统的一次性身份验证方法到持续身份验证的模式转变,为保护用户免受潜在威胁增加了一层额外的安全保障。与传统的认证方法相比,连续认证具有几个优势。首先,它通过用户与设备的交互不断验证用户身份,从而降低了未经授权访问的风险,从而增强了安全性。其次,它提供了无缝、非侵入式的用户体验,无需重复验证提示。此外,它还能提供强大的保护,防止身份盗用、未经授权访问和设备篡改等各种威胁。持续身份验证的应用范围不仅限于单个设备,还包括相互连接的系统和网络。这种整体方法可确保数字平台和服务的全面安全。实验表明,逻辑回归模型在测试数据集上的准确率达到了 82.32%,突出了其对二元分类任务的稳健性。此外,随机森林模型以 92.18% 的准确率胜出,突显了其处理复杂特征交互的卓越能力。在这项研究中,序列神经网络在 HAR 数据集上的准确率达到了 92%,大大超过了传统的机器学习模型。该模型还展示了强大的泛化能力,在不同的交叉验证褶皱中性能下降极小。
Using Behavioural Biometrics and Machine Learning in Smart Gadgets for Continuous User Authentication Purposes
In the ever-evolving realm of technology, the identification of human activities using intelligent devices such as smartwatches, fitness bands, and smartphones has emerged as a crucial area of study. These devices, equipped with inertial sensors, gather a wealth of data and provide insights into users' movements and behaviors. These data not only serve practical purposes, but also hold significant implications for domains such as healthcare and fitness tracking. Traditionally, these devices have been employed to monitor various health metrics such as step counts, calorie expenditure, and real-time blood pressure monitoring. However, recent research has shifted its focus to leveraging the data collected by these sensors for user authentication purposes. This innovative approach involves the utilization of Machine Learning (ML) models to analyze the routine data captured by sensors in smart devices employing ML algorithms, which can recognize and authenticate users based on their unique movement patterns and behaviors. This introduces a paradigm shift from traditional one-time authentication methods to continuous authentication, adding an extra layer of security to protect users against potential threats. Continuous authentication offers several advantages over its conventional counterparts. First, it enhances security by constantly verifying a user's identity through their interaction with the device, thereby mitigating the risk of unauthorized access. Second, it provides a seamless and nonintrusive user experience, eliminating the need for repetitive authentication prompts. Moreover, it offers robust protection against various threats such as identity theft, unauthorized access, and device tampering. The application of continuous authentication extends beyond individual devices and encompasses interconnected systems and networks. This holistic approach ensures a comprehensive security across digital platforms and services. The experiments demonstrate that the logistic regression model achieves an accuracy of 82.32% on the test dataset, highlighting its robustness for binary classification tasks. Additionally, the random forest model outperforms with a 92.18% accuracy, emphasizing its superior capability in handling complex feature interactions. In the study, the sequential neural network achieved an accuracy of 92% on the HAR dataset, outperforming traditional machine learning models by a significant margin. The model also demonstrated robust generalization capabilities with a minimal drop in performance across various cross-validation folds.