迈向移动取证环境下的联合语义分析

IF 2 4区 医学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Jian Xi , Melanie Siegel , Dirk Labudde , Michael Spranger
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引用次数: 0

摘要

近年来,移动设备已经成为我们日常生活中主要的通信媒介。这种趋势在策划、安排和实施犯罪活动,特别是有组织犯罪中也很明显。因此,移动设备已成为数据分析师或调查人员的重要证据来源,特别是在执法机构(LEAs)中。然而,通过移动设备进行的通信产生了大量数据,使得人工分析变得不切实际,并导致等待分析过程的证据积压越来越多,这可能需要数月至数年的时间,从而阻碍了调查和审判。文本聊天消息的自动分析不足,因为通信并不局限于单一的模式,如文本,而是跨越多种模式,包括语音消息、图片、视频,有时还包括各种信使(渠道)。这些模式经常在同一通信中重叠或交换,使分析过程进一步复杂化。要正确全面地理解这种交际,必须通过一致的联合语义分析来考虑所有的形式和渠道。本文介绍了一种新的移动取证方法,通过统一不同模式和渠道的语义概念,使移动数据的有效评估不会失去语义一致性。此外,提出了一种知识引导的主题建模方法,将专业知识整合到调查过程中,以有效地检查大量有噪声的移动数据。通过这种方式,调查人员可以快速识别通信中的证据部分,并完全有助于重建事件的过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Towards a joint semantic analysis in mobile forensics environments

Towards a joint semantic analysis in mobile forensics environments
In recent years, mobile devices have become the dominant communication medium in our daily lives. This trend is also evident in the planning, arranging, and committing of criminal activities, particularly in organized crime. Accordingly, mobile devices have become an essential source of evidence for data analysts or investigators, especially in Law Enforcement Agencies (LEAs). However, communication via mobile devices generates vast amounts of data, rendering manual analysis impractical and resulting in growing backlogs of evidence awaiting analysis process, which can take months to years, thereby hindering investigations and trials. The automatic analysis of textual chat messages falls short because communication is not limited to the single modality, such as text, but instead spans multiple modalities, including voice messages, pictures, videos, and sometimes various messengers (channels). These modalities frequently overlap or interchange within the same communication, further complicating the analysis process. To achieve a correct and comprehensive understanding of such communication, it is essential to consider all modalities and channels through a consistent joint semantic analysis. This paper introduces a novel mobile forensics approach that enables efficient assessment of mobile data without losing semantic consistency by unifying semantic concepts across different modalities and channels. Additionally, a knowledge-guided topic modeling approach is proposed, integrating expertise into the investigation process to effectively examine large volumes of noisy mobile data. In this way, investigators can quickly identify evidentiary parts of the communication and completely facilitate reconstructing the course of events.
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来源期刊
CiteScore
5.90
自引率
15.00%
发文量
87
审稿时长
76 days
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