In this work, we propose ENSEI, a secure inference (SI) framework based on the frequency-domain secure convolution (FDSC) protocol for the efficient execution of privacy-preserving visual recognition. Our observation is that, under the combination of homomorphic encryption and secret sharing, homomorphic convolution can be obliviously carried out in the frequency domain, significantly simplifying the related computations. We provide protocol designs and parameter derivations for number-theoretic transform (NTT) based FDSC. In the experiment, we thoroughly study the accuracy-efficiency trade-offs between time- and frequency-domain homomorphic convolution. With ENSEI, compared to the best known works, we achieve 5--11x online time reduction, up to 33x setup time reduction, and up to 10x reduction in the overall inference time. A further 33% of bandwidth reductions can be obtained on binary neural networks with only 1% of accuracy degradation on the CIFAR-10 dataset.
翻译:在这项工作中,我们提出ENSEI,这是一个基于频率安全化协议的安全推论框架,以高效实施隐私保护视觉识别。我们的意见是,在同质加密和秘密共享的结合下,可忽略在频率范围内进行同质变异,大大简化相关计算。我们为基于数字理论变换(NTT)的FDSC提供了协议设计和参数衍生。在实验中,我们深入研究了时间和频率常态变异之间的准确性-效率权衡。与已知的最佳工程相比,ENSEI实现了5-11x在线时间缩短,减速达33x时间,总发回时间减速达10x。还可以在二进制神经网络上进一步获得33%的带宽减量,而CIFAR-10数据集的精度降解率只有1%。