Automated Planning to Prioritise Digital Forensics Investigation Cases Containing Indecent Images of Children

Saad Khan, S. Parkinson, Monika Roopak, R. Armitage, Andrew M. Barlow
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引用次数: 1

Abstract

Law enforcement agencies (LEAs) globally are facing high demand to view, process, and analyse digital evidence. Arrests for Indecent Images of Children (IIOC) have risen by a factor of 25 over the previous decade. A case typically requires the use of computing resources for between 2-4 weeks. The lengthy time is due to the sequential ordering of acquiring a forensically sound copy of all data, systematically extracting all images, before finally analysing each to automatically identify instances of known IIOC images (second-generation) or manually identifying new images (first-generation). It is therefore normal practice that an understanding of the image content is only obtained right at the end of the investigative process. A reduction in processing time would have a transformative impact, by enabling timely identification of victims, swift intervention with perpetrators to prevent re-offending, and reducing the traumatic psychological effects of any ongoing investigation for the accused and their families. In this paper, a new approach to the digital forensic processes containing suspected IIOC content is presented, whereby in-process metrics are used to prioritise case handling, ensuring cases with a high probability of containing IIOC content are prioritised. The use of automated planning (AP) enables a systematic approach to case priorisation. In this paper, a planning approach is presented where AP is used to generate investigative actions in 60-minute segments, before re-planning to account for discoveries made during the execution of planned actions. A case study is provided consisting of 5 benchmark cases, demonstrating on average a reduction of 36% in processing time and a 26% reduction in time required to discover IIOC content.
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自动计划优先处理包含儿童不雅图像的数字取证调查案件
全球执法机构(LEAs)在查看、处理和分析数字证据方面面临着很高的需求。在过去的十年里,因儿童不雅照片被捕的人数增加了25倍。一个案例通常需要使用2-4周的计算资源。之所以需要这么长的时间,是因为要按顺序获取所有数据的法医完好副本,系统地提取所有图像,然后最后分析每个图像以自动识别已知的IIOC图像实例(第二代)或手动识别新图像(第一代)。因此,通常的做法是,只有在调查过程结束时才能获得对图像内容的理解。缩短处理时间将产生变革性的影响,因为它能够及时查明受害者,迅速干预犯罪者以防止再次犯罪,并减少任何正在进行的调查对被告及其家属造成的创伤性心理影响。在本文中,提出了一种包含可疑IIOC内容的数字取证过程的新方法,即使用进程内度量来确定案件处理的优先级,确保具有高概率包含IIOC内容的案件被优先处理。使用自动规划(AP)可以采用系统的方法来确定病例的优先级。在本文中,提出了一种规划方法,其中AP用于在60分钟的片段中生成调查行动,然后重新规划以考虑在计划行动执行过程中所做的发现。提供了一个由5个基准案例组成的案例研究,展示了处理时间平均减少了36%,发现IIOC内容所需的时间减少了26%。
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