Recent Advances on Deep Learning for Safety and Security of Multimedia Data in the Critical Infrastructure

Introduction

There are some systems and networks that make up the infrastructure of society. Some of these infrastructures are of utmost importance and are related to each other. If one of these is critically damaged, then they can cause huge disturbances and losses for a nation. These are known as critical infrastructures. Particularly, the security and privacy of critical infrastructures (a nation’s strategic national assets, i.e., banking and finance, communications, emergency services, energy, food chain, health, water, mass gatherings, transport, etc.), which is an essential part of our daily life, in accessing different systems, services, and applications are serious issues. However, it is challenging to achieve, as technology is changing at rapid speed and our systems are ever more complex. The explosion of multimedia data has created unprecedented opportunities and fundamental security challenges as they are not just large in volume, but also unstructured and multi-modal. Deep learning can be used to provide a robust defense mechanism for critical infrastructures. There is always the possibility of cyber-attacks against these infrastructures, which can be predicted and detected with the help of deep learning. Deep learning can be used to identify the direct and indirect connections between these infrastructures so that in case of attack, appropriate security measures can be enforced. Deep learning can also be used to identify the weaknesses present in the current security mechanisms so that the vulnerabilities can be patched before they can be exploited. Deep learning can also be used for device layers of security mechanisms that can efficiently withstand such attacks. These defense mechanisms could be of autonomous nature and thus will require almost no human intervention.

This Special Issue mainly focuses on deep learning for the safety and security of multimedia data in critical infrastructure, addressing both original algorithmic development and new applications. We are soliciting original contributions, of leading researchers and practitioners from academia as well as industry, which address a wide range of theoretical and application issues in this domain. Please note that all the submitted papers must be within the general scope of the Symmetry journal.

The topics relevant to this Special Issue include but are not limited to the following:

  • Security and privacy of multimedia data in telecommunication systems
  • Security and privacy of multimedia data in communication systems
  • Security and privacy of multimedia data in eCommerce
  • Security and privacy of multimedia data in emergency services, energy, food chain
  • Security, privacy and forensics of multimedia data in critical infrastructure
  • Security and privacy of multimedia data in mobile cloud computing
  • Security and privacy management of data in cloud computing
  • Security and privacy of Industrial control systems
  • Mobile cloud computing intrusion detection systems
  • Cryptography, authentication, authorization, and usage control for data in cloud
  • Security and privacy of multimedia data in smartphone devices
  • Security of mobile, peer-to-peer and pervasive services in clouds
  • Security of data in mobile commerce and mobile internet of things
  • Security and privacy of multimedia data in sensor networks
  • Big data-enabling social networks on clouds
  • Resource management for multimedia data on clouds
  • Cryptography, authentication, and authorization for data in mobile devices
  • Security and privacy of multimedia data in web service
  • Evolutionary algorithms for mining social networks for decision support

Artificial neural network and neural system applied to social media and mitigating the privacy risks in critical infrastructure

Editors

Dr. Brij Gupta
Prof. Dr. Dharma P. Agrawal
Deepak Gupta

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Symmetry
Symmetry, an international, peer-reviewed Open Access journal.