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Handedness Recognition through Keystroke-Typing Behavior in Computer Forensics Analysis

机译:通过计算机取证分析中的击键字键入行为来识别

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Recognizing computer users' handedness provides important clues for profiling computer criminals in digital forensic analysis. Existing technologies for handedness recognition have two main problems that limit their applicability in the scenario of digital crimes: they can be intrusive, and they require costly equipment. Our solution is to infer users' handedness by analyzing keystroke-typing behavior. Field studies are first conducted to gather users' keystroke-typing data during their interaction with computers. Timing features are extracted to characterize users' typing rhythms, and the correlation between keystroke features and handedness is analyzed. Classification techniques are then developed for handedness recognition. Experimental results show that the handedness could be efficiently and accurately inferred from users' keystroke-typing behavior, with recognition rates expressed by the Area Under the ROC Curve (AUC) of 87.75%. To our knowledge, this is the first work that infers users' handedness based on their keystroke-typing biometric during interaction with computers, without dedicated and explicit actions that require attention from users.
机译:识别计算机用户的手,为数字法医分析中的分析计算机犯罪分子提供了重要的线索。现有技术用于手持识别技术有两个主要问题,限制了他们在数字犯罪方案中的适用性:它们可能是侵入性的,它们需要昂贵的设备。我们的解决方案是通过分析击键字键入行为来推断用户的手。首先进行现场研究以在与计算机的互动期间收集用户的击键字键入数据。提取定时特征以表征用户键入节奏,分析了击键特征和手机之间的相关性。然后开发了分类技术以进行手持识别。实验结果表明,可以从用户的击键字键入行为中有效地和准确地推断出识别率,识别率由ROC曲线(AUC)为87.75%的区域。为了我们的知识,这是在与计算机的互动期间,在与计算机的互动过程中,在击键字键入的生物识别中,这是第一工作的第一项工作,而不需要从用户注意力的专用和显式动作。

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