A hybrid artificial intelligence framework for enhancing digital forensic investigations of infotainment systems

IF 2 4区 医学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Forensic Science International-Digital Investigation Pub Date : 2024-04-29 DOI:10.1016/j.fsidi.2024.301751
Yasamin Fayyaz , Abdulaziz Almehmadi , Khalil El-Khatib
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Abstract

Infotainment systems in vehicles have become important sources of digital evidence in forensic investigations. Analyzing data from these systems can provide valuable insights into a suspect's activities and interactions. In this paper, we propose a hybrid artificial intelligence (AI) framework that combines unsupervised learning using K-means clustering and language model analysis to enhance the forensic analysis process. The proposed methodology was applied to two distinct datasets from Hyundai and Mitsubishi infotainment systems. In the Hyundai dataset, the recall for contact names and phone numbers improved by 18% and 3% respectively when compared to clustering alone. Similarly, in the Mitsubishi dataset, the recall of song names improved by 2%. In addition, this hybrid approach enabled the discovery of more forms of forensically-relevant data stored in the infotainment systems, such as geographical locations and connected devices, that would have been infeasible to find with either manual analysis or clustering alone. Despite the presence of some hallucinations, the combination of these techniques resulted in improved ease of analysis and increased recall, demonstrating the potential of this hybrid approach in forensic investigations.

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加强信息娱乐系统数字取证调查的混合人工智能框架
车载信息娱乐系统已成为法证调查中重要的数字证据来源。分析这些系统中的数据可以为了解嫌疑人的活动和互动提供有价值的信息。在本文中,我们提出了一种混合人工智能(AI)框架,将使用 K 均值聚类的无监督学习与语言模型分析相结合,以增强法证分析过程。我们将所提出的方法应用于现代汽车和三菱汽车信息娱乐系统的两个不同数据集。在现代汽车数据集中,与单独聚类相比,联系人姓名和电话号码的召回率分别提高了 18% 和 3%。同样,在三菱数据集中,歌曲名称的召回率提高了 2%。此外,这种混合方法还能发现信息娱乐系统中存储的更多形式的法证相关数据,如地理位置和连接设备,而这些数据仅靠人工分析或聚类是无法发现的。尽管存在一些幻觉,但这些技术的结合提高了分析的便利性,增加了召回率,显示了这种混合方法在法医调查中的潜力。
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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
期刊最新文献
Commentary:- Can I use that tool? Temporal metadata analysis: A learning classifier system approach Uncertainty and error in location traces Competence in digital forensics “What you say in the lab, stays in the lab”: A reflexive thematic analysis of current challenges and future directions of digital forensic investigations in the UK
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