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Identification and Extraction of Digital Forensic Evidence from Multimedia Data Sources using Multi-algorithmic Fusion

机译:使用多媒体数据源的识别和提取数字法医证据,使用多媒体融合

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With the enormous increase in the use and volume of photographs and videos, multimedia-based digital evidence has come to play an increasingly fundamental role in criminal investigations. However, given the increase in the volume of multimedia data, it is becoming time-consuming and costly for investigators to analyse the images manually. Therefore, a need exists for image analysis and retrieval techniques that are able to process, analyse and retrieve images efficiently and effectively. Outside of forensics, image annotation systems have become increasingly popular for a variety of purposes and major software/IT companies, such as Amazon, Microsoft and Google all have cloud-based image annotation systems. The paper presents a series of experiments that evaluate commercial annotation systems to determine their accuracy and ability to comprehensively annotate images within a forensic image analysis context (rather than simply single object imagery, which is typically the case). The paper further proposes and demonstrates the value of utilizing a multi-algorithmic approach via fusion to achieve the best results. The results of these experiments show that by existing systems the highest Average Recall was achieved by imagga with 53%, whilst the proposed multi-algorithmic system achieved 77% across the selected datasets. These results demonstrate the benefit of using a multi-algorithmic approach.
机译:凭借巨大的应用和视频的使用和体积增加,基于多媒体的数字证据在刑事调查中起着越来越基本的作用。然而,鉴于多媒体数据量的增加,调查人员对调查人员分析图像变得耗时和昂贵。因此,需要一种能够有效且有效地处理,分析和检索图像的图像分析和检索技术。在取证之外,图像注释系统越来越受到各种目的和主要软件/ IT公司的流行,例如亚马逊,微软和谷歌都拥有基于云的图像注释系统。本文介绍了一系列实验,评估商业注释系统,以确定其准确性和能力在法医图像分析上下文中全面注释图像(而不是简单地单独的单个对象图像,这通常是这种情况)。本文进一步提出并展示了通过融合利用多算法方法来实现最佳结果的值。这些实验的结果表明,现有系统通过ImagGA实现了最高的平均召回,其中53%,而所提出的多算法系统在所选数据集中实现77%。这些结果证明了使用多算法方法的好处。

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