隐马尔可夫模型的安全计算

Mehrdad Aliasgari, Marina Blanton
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引用次数: 19

摘要

隐马尔可夫模型是一种流行的统计工具,在模式识别中有大量的应用。在一些这样的应用中,特别是说话人识别,计算涉及到个人数据,这些数据可以识别个人,必须受到保护。因此,我们开发了适合于说话人识别和其他应用的HMM和高斯混合模型(GMM)计算的隐私保护技术。与以前的工作不同,我们的解决方案使用浮点算法,这使我们能够同时实现高精度、可证明的安全保证和合理的性能。我们开发了基于阈值同态加密的两方HMM和GMM计算技术和基于阈值线性秘密共享的多方计算技术,这些技术适用于安全协同计算和安全外包。
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Secure computation of hidden Markov models
Hidden Markov Model (HMM) is a popular statistical tool with a large number of applications in pattern recognition. In some of such applications, including speaker recognition in particular, the computation involves personal data that can identify individuals and must be protected. For that reason, we develop privacy-preserving techniques for HMM and Gaussian mixture model (GMM) computation suitable for use in speaker recognition and other applications. Unlike prior work, our solution uses floating point arithmetic, which allows us to simultaneously achieve high accuracy, provable security guarantees, and reasonable performance. We develop techniques for both two-party HMM and GMM computation based on threshold homomorphic encryption and multi-party computation based on threshold linear secret sharing, which are suitable for secure collaborative computation as well as secure outsourcing.
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