4.5 Article

Deep-Learning-Empowered Digital Forensics for Edge Consumer Electronics in 5G HetNets

期刊

IEEE CONSUMER ELECTRONICS MAGAZINE
卷 11, 期 2, 页码 42-50

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/MCE.2020.3047606

关键词

Forensics; Digital forensics; 5G mobile communication; Tools; Detectors; Deep learning; Consumer electronics; Information security; digital forensics; deep learning; edge consumer electronics

资金

  1. China National Key RD Program [2016YFB0502202]
  2. National Natural Science Foundation of China [61762062]
  3. Science and Technology Innovation Platform Project of Jiangxi Province [20181BCD40005]
  4. Major Discipline Academic and Technical Leader Training Plan Project of Jiangxi Province [20172BCB22030]
  5. Jiangxi Province Natural Science Foundation of China [20192BAB207019]
  6. Japan Society for the Promotion of Science [JP18K18044]

向作者/读者索取更多资源

The upcoming 5G HetNets have attracted worldwide attention due to their ability to transport large amounts of high-velocity data. However, there are also concerns regarding the security of visual information channels. In this paper, a novel framework based on deep learning is proposed as a digital forensics tool to protect end users. The proposed model shows improved data collection efficiency, robustness, and detection performance compared to conventional methods. With the assistance of 5G HetNets, the framework can provide high-quality real-time forensics services on consumer devices, which is of significant practical value.
The upcoming 5G heterogeneous networks (HetNets) have attracted much attention worldwide. Large amounts of high-velocity data can be transported by using the bandwidth spectrum of HetNets, yielding both great benefits and several concerning issues. In particular, great harm to our community could occur if the main visual information channels, such as images and videos, are maliciously attacked and uploaded to the Internet, where they can be spread quickly. Therefore, we propose a novel framework as a digital forensics tool to protect end users. It is built based on deep learning and can realize the detection of attacks via classification. Compared with the conventional methods and justified by our experiments, the data collection efficiency, robustness, and detection performance of the proposed model are all refined. In addition, assisted by 5G HetNets, our proposed framework makes it possible to provide high-quality real-time forensics services on edge consumer devices such as cell phone and laptops, which brings colossal practical value. Some discussions are also carried out to outline potential future threats.

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