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[Keyword] outliers(3hit)

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  • Machine Learning Based Hardware Trojan Detection Using Electromagnetic Emanation

    Junko TAKAHASHI  Keiichi OKABE  Hiroki ITOH  Xuan-Thuy NGO  Sylvain GUILLEY  Ritu-Ranjan SHRIVASTWA  Mushir AHMED  Patrick LEJOLY  

     
    PAPER

      Pubricized:
    2021/09/30
      Vol:
    E105-A No:3
      Page(s):
    311-325

    The growing threat of Hardware Trojans (HT) in the System-on-Chips (SoC) industry has given way to the embedded systems researchers to propose a series of detection methodologies to identify and detect the presence of Trojan circuits or logics inside a host design in the various stages of the chip design and manufacturing process. Many state of the art works propose different techniques for HT detection among which the popular choice remains the Side-Channel Analysis (SCA) based methods that perform differential analysis targeting the difference in consumption of power, change in electromagnetic emanation or the delay in propagation of logic in various paths of the circuit. Even though the effectiveness of these methods are well established, the evaluation is carried out on simplistic models such as AES coprocessors and the analytical approaches used for these methods are limited by some statistical metrics such as direct comparison of EM traces or the T-test coefficients. In this paper, we propose two new detection methodologies based on Machine Learning algorithms. The first method consists in applying the supervised Machine Learning (ML) algorithms on raw EM traces for the classification and detection of HT. It offers a detection rate close to 90% and false negative smaller than 5%. In the second method, we propose an outlier/novelty algorithms based approach. This method combined with the T-test based signal processing technique, when compared with state-of-the-art, offers a better performance with a detection rate close to 100% and a false positive smaller than 1%. In different experiments, the false negative is nearly the same level than the false positive and for that reason the authors only show the false positive value on the results. We have evaluated the performance of our method on a complex target design: RISC-V generic processor. Three HTs with their corresponding sizes: 0.53%, 0.27% and 0.09% of the RISC-V processors are inserted for the experimentation. In this paper we provide elaborative details of our tests and experimental process for reproducibility. The experimental results show that the inserted HTs, though minimalistic, can be successfully detected using our new methodology.

  • MAD Robust Fusion with Non-Gaussian Channel Noise

    Nga-Viet NGUYEN  Georgy SHEVLYAKOV  Vladimir SHIN  

     
    PAPER-Digital Signal Processing

      Vol:
    E92-A No:5
      Page(s):
    1293-1300

    To solve the problem of distributed multisensor fusion, the optimal linear methods can be used in Gaussian noise models. In practice, channel noise distributions are usually non-Gaussian, possibly heavy-tailed, making linear methods fail. By combining a classical tool of optimal linear fusion and a robust statistical method, the two-stage MAD robust fusion (MADRF) algorithm is proposed. It effectively performs both in symmetrically and asymmetrically contaminated Gaussian channel noise with contamination parameters varying over a wide range.

  • An Extension to the Natural Gradient Algorithm for Robust Independent Component Analysis in the Presence of Outliers

    Muhammad TUFAIL  Masahide ABE  Masayuki KAWAMATA  

     
    LETTER-Digital Signal Processing

      Vol:
    E89-A No:9
      Page(s):
    2429-2432

    In this paper, we propose to employ an extension to the natural gradient algorithm for robust Independent Component Analysis against outliers. The standard natural gradient algorithm does not exhibit this property since it employs nonrobust sample estimates for computing higher order moments. In order to overcome this drawback, we propose to use robust alternatives to higher order moments, which are comparatively less sensitive to outliers in the observed data. Some computer simulations are presented to show that the proposed method, as compared to the standard natural gradient algorithm, gives better performance in the presence of outlying data.