Abstract

With the rapid development of 5G technology, its high bandwidth, high reliability, low delay, and large connection characteristics have opened up a broader application field of IoT. Moreover, AIoT (Artificial Intelligence Internet of Things) has become the new development direction of IoT. Through deep learning of real-time data provided by the Internet of Things, AI can judge user habits more accurately, make devices behave in line with user expectations, and become more intelligent, thus improving product user experience. However, in the process, there is a lot of data interaction between the edge and the cloud. Given that the shared data contain a large amount of private information, preserving information security on the shared data is an important issue that cannot be neglected. In this paper, we combine deep learning with homomorphic encryption algorithm and design a deep learning network model based on secure multiparty computing (MPC). In the whole process, we realize that the cloud only owns the encryption samples of users, and users do not own any parameters or structural information related to the model. In the experimental part, we input the encrypted Mnist and Cifar-10 datasets into the model for testing, and the results show that the classification accuracy rate of the encrypted Mnist can reach 99.21%, which is very close to the result under plaintext. The classification accuracy rate of encrypted Cifar-10 can reach 91.35%, slightly lower than the test result in plaintext and better than the existing deep learning network model that can realize data privacy protection.

Highlights

  • With the rapid development of 5G technology, 5G is leading the evolution of IoT standard [1,2,3]

  • It should be noted that IoT standard mainly solves the problem of data transmission technology [4, 5], while AIoT focuses on the new application form of IoT, emphasizing services, especially back-end processing and application oriented to the Internet of ings [6, 7]. e massive and complex data generated by the Internet of ings need to be analyzed and processed, and AI technology is exactly the best choice for effective information processing

  • We present an interaction model based on secure multiparty computing, and the optimized Paillier encryption algorithm can be used to protect users’ privacy data and obtain the expected reasoning results

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Summary

Introduction

With the rapid development of 5G technology, 5G is leading the evolution of IoT standard [1,2,3]. E classification accuracy rate of Cifar-10 encrypted dataset can reach 91.35%, slightly lower than the test result in plaintext and better than the existing deep learning network model that can realize user data privacy protection. Zhang et al proposed using BGV encryption scheme to support the secure computation of the high-order back-propagation algorithm efficiently for deep computation model training on cloud. In their approach, to avoid a multiplicative depth too big, after each iteration, the updated weights are sent to the parties to be decrypted and reencrypted. We present an interaction model based on secure multiparty computing, and the optimized Paillier encryption algorithm can be used to protect users’ privacy data and obtain the expected reasoning results

The Model
67 Average pooling
The Practical Application
Conclusions
Findings
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