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Redesign of Gaussian Mixture Model for Efficient and Privacy-preserving Speaker Recognition

机译:高斯混合模型的重新设计,以实现高效,保护隐私的说话人识别

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This paper proposes an algorithm to perform privacy-preserving (PP) speaker recognition using Gaussian mixture models (GMM). We consider a scenario where the users have to enrol their voice biometric with the third-party service providers to access different services (i.e., banking). Once the enrolment is done, the users can authenticate themselves to the system using their voice instead of passwords. Since the voice is unique for individuals, storing the users' voice features at the third-party server raises privacy concerns. Hence, in this paper we propose a novel technique using randomization to perform voice authentication, which allows users to enrol and authenticate their voice in the encrypted domain, hence privacy is preserved. To achieve this, we redesign the GMM to work on encrypted domain. The proposed algorithm is validated using the widely used TIMIT speech corpus. Experimental results demonstrate that the proposed PP algorithm does not degrade the performance compared to the non-PP method and achieve 96.16% true positive rate and 1.77% false positive rate. Demonstration on Android smartphone shows that the algorithm can be executed within two seconds with only 30% of CPU power.
机译:本文提出了一种使用高斯混合模型(GMM)进行隐私保护(PP)说话人识别的算法。我们考虑了一种情况,即用户必须向第三方服务提供商注册其语音生物特征以访问不同的服务(即银行业务)。注册完成后,用户可以使用语音而不是密码对系统进行身份验证。由于语音对于个人而言是唯一的,因此将用户的语音功能存储在第三方服务器上会引起隐私问题。因此,在本文中,我们提出了一种使用随机化来执行语音认证的新技术,该技术允许用户在加密域中注册和认证他们的语音,从而保护了隐私。为此,我们重新设计了GMM以在加密域上工作。使用广泛使用的TIMIT语音语料对所提出的算法进行了验证。实验结果表明,与非PP方法相比,所提出的PP算法不会降低性能,并能达到96.16%的真阳性率和1.77%的假阳性率。 Android智能手机上的演示表明,该算法可以在两秒钟内执行,仅占用30%的CPU能力。

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