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首页> 外文期刊>IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems >A First Study of Compressive Sensing for Side-Channel Leakage Sampling
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A First Study of Compressive Sensing for Side-Channel Leakage Sampling

机译:侧通道泄漏采样压缩感应的第一研究

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An important prerequisite for side-channel attacks (SCAs) is leakage sampling where the side-channel measurements (i.e., power traces) of the cryptographic device are collected for further analysis. However, as the operating frequency of cryptographic devices continues to increase due to advancing technology, leakage sampling will impose higher requirements on the sampling rate and storage capacity of the sampling equipment. This article undertakes the first study to show that effective leakage sampling can be achieved without relying on sophisticated equipments through compressive sensing (CS). As long as the information is leaked in the low-frequency component, CS can obtain low-dimensional samples by simply projecting the high-dimensional signals onto the observation matrix. The power traces can then be reconstructed in a workstation for further analysis and storage. With this approach, the sampling rate to obtain power traces is no longer limited by the operating frequency of the cryptographic device and the Nyquist sampling theorem. Instead, it depends on the sparsity of the leakage signal. As such, CS can employ a much lower sampling rate and yet obtain equivalent leakage sampling performance, which significantly lowers the requirement of sampling equipments. The feasibility of our approach is verified theoretically and through experiments.
机译:侧通道攻击(SCA)的重要前提是泄漏采样,其中收集了加密设备的侧通道测量(即功率迹线)以进行进一步分析。然而,由于加密设备的运行频率继续增加,由于前进技术,泄漏采样将对采样设备的采样率和存储容量施加更高的要求。本文首次进行第一次研究表明,在不依赖于压缩传感(CS)的情况下,可以实现有效的泄漏采样。只要信息在低频分量中泄漏,CS就可以通过简单地将高维信号投影到观察矩阵上来获得低维样本。然后可以在工作站中重建电力迹线以进行进一步的分析和存储。利用这种方法,获得电力迹线的采样率不再受加密设备的工作频率和奈奎斯特采样定理的限制。相反,它取决于泄漏信号的稀疏性。因此,CS可以采用更低的采样率,并且获得等效的泄漏采样性能,这显着降低了采样设备的要求。理论上和通过实验验证了我们方法的可行性。

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