Electro-Magnetic Side-Channel Attack Through Learned Denoising and Classification
This paper proposes an upgraded electro-magnetic side-channel attack that automatically reconstructs the intercepted data. A novel system is introduced, running in parallel with leakage signal interception and catching compromising data in real-time. Based on deep learning and character recognition the proposed system retrieves more than 57 signals regardless of signal type: analog or digital. The approach is also extended to a protection system that triggers an alarm if the system is compromised, demonstrating a success rate over 95 radio and graphics processing unit architectures, this solution can be easily deployed onto existing information systems where information shall be kept secret.
READ FULL TEXT 
  
  
     share
 share