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FALCON: A Fourier Transform Based Approach for Fast and Secure Convolutional Neural Network Predictions

机译:FALCON:一种基于傅立叶变换的快速安全的卷积神经网络预测方法

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Deep learning as a service has been widely deployed to utilize deep neural network models to provide prediction services. However, this raises privacy concerns since clients need to send sensitive information to servers. In this paper, we focus on the scenario where clients want to classify private images with a convolutional neural network model hosted in the server, while both parties keep their data private. We present FALCON, a fast and secure approach for CNN predictions based on fast Fourier Transform. Our solution enables linear layers of a CNN model to be evaluated simply and efficiently with fully homomorphic encryption. We also introduce the first efficient and privacy-preserving protocol for softmax function, which is an indispensable component in CNNs and has not yet been evaluated in previous work due to its high complexity.
机译:深度学习即服务已被广泛部署以利用深度神经网络模型来提供预测服务。但是,这引起了隐私问题,因为客户端需要将敏感信息发送到服务器。在本文中,我们关注的场景是客户希望使用服务器中托管的卷积神经网络模型对私有图像进行分类,而双方都将其数据保持私有。我们介绍FALCON,这是一种基于快速傅立叶变换的CNN预测快速安全的方法。我们的解决方案使CNN模型的线性层能够通过完全同态加密而简单有效地进行评估。我们还介绍了第一个用于softmax功能的有效且可保护隐私的协议,它是CNN中必不可少的组成部分,由于其高度复杂性尚未在以前的工作中进行评估。

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