基于内容的网络跟踪检测技术方案

Audrey Asante, Xiaohua Feng
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引用次数: 3

摘要

科技的持续使用导致了网络跟踪的兴起。网络跟踪被视为一种被技术改变的传统跟踪方法。这种罪行现在已经使用技术工具和技术进行了现代化改造。当今世界网络跟踪的持续增加引起了人们对解决这一问题的关注。尽管在犯罪学、法学、公共卫生、社会学和心理学等领域对这一犯罪进行了研究,但如何发现、预防和调查这一犯罪仍然是一个挑战。传统的跟踪方法已经被用来打击它,尽管这种犯罪是在网上进行的。不幸的是,这些方法几乎没有提供检测和预防它的解决方案。这种犯罪的普遍存在,加上技术的进步,有必要制定技术战略来减轻这种犯罪,保护受害者,并协助执法机构。本文提出了一种基于内容的网络跟踪检测框架。该框架由消息识别、过滤、检测(内容检测和罪犯分析)和证据模块组成。它被设计成一个法医准备框架,可以自动检测网络跟踪,收集证据并分析潜在的罪犯。该框架采用机器学习、数据挖掘技术、数字取证和分析来分析文本、图像和媒体内容,收集证据并分析罪犯。这个框架不仅可以自动检测网络跟踪,而且还可以作为执法部门的调查工具。
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Content-Based Technical Solution for Cyberstalking Detection
The continued usage of technology has led to the rise of cyberstalking. Cyberstalking is seen as traditional method of stalking that has been altered by technology. This crime has now been modernized using technological tools and techniques. The continued increase in cyberstalking in the world today has drawn attention to the need to address this problem. Though studies on this crime have been conducted in the fields of criminology, legal, public health, sociology, and psychology, it still remains a challenge to detect, prevent, and investigate this crime. Traditional stalking methods have been used to combat it, despite the fact that this crime is committed online. Unfortunately, these methods have provided few solutions for detecting and preventing it. The prevalence of this crime, combined with technological advancement, has necessitated the development of technical strategies to mitigate it, protect victims, and assist law enforcement agencies. In this study, a content-based detection framework for cyberstalking is proposed. The framework consists of message identification, filtering, detection (content detection and profiling offender) and evidence modules. It is designed as a forensic readiness framework that can automatically detect cyberstalking, gather evidence and profile potential offenders. The framework employs machine learning, data mining techniques, digital forensics, and profiling to analyze text, image, and media contents, collect evidence, and profile offenders. This framework would not only detect cyberstalking automatically, but it would also be useful as an investigative tool for law enforcement.
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