Cross-Layer Learning

Tushar Mane, A. Pawar
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Abstract

Deep learning-based investigation mechanisms are available for conventional forensics, but not for IoT forensics. Dividing the system into different layers according to their functionalities, collecting data from each layer, finding the correlating factor, and using it for pattern detection is the fundamental concept behind the proposed intelligent system. The authors utilize this notion for embedding intelligence in forensics and speed up the investigation process by providing hints to the examiner. They propose a novel cross-layer learning architecture (CCLA) for IoT forensics. To the best of their knowledge, this is the first attempt to incorporate deep learning into the forensics of the IoT ecosystem.
跨层学习
基于深度学习的调查机制可用于传统取证,但不适用于物联网取证。根据系统的功能将系统划分为不同的层,从每一层收集数据,找到相关因素,并将其用于模式检测是所提出的智能系统背后的基本概念。作者利用这一概念嵌入情报在法医学和加速调查过程,通过提供提示审查员。他们提出了一种新的物联网取证跨层学习架构(CCLA)。据他们所知,这是将深度学习纳入物联网生态系统取证的第一次尝试。
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