A New Method of the Convolutional Neural Network Structure Improvement to Protect Data Based on the Obfuscation


연구 분야: Analysis



학회: IECC '21: Proceedings of the 3rd International Electronics Communication Conference


초록

This paper proposes a new method to improve the structure of convolutional neural networks to preserve training data based on obfuscation technique. The purpose of this approach is to protect data in a distributed environment when parties want to share datasets for training while ensuring data privacy. To solve this problem, we use a technique that obfuscates the input feature matrix in each region with the size of a pooling window randomly. Based on the properties of the max pooling function and the permutation of positions in each filter window, the resulting matrix has a constant result. The proposed method could be applied to all convolutional neural network models by editing the first convolutional layer. The input matrix shuffling is done randomly so it completely protects your privacy without changing the accuracy. The proposed method has been tested according to K-fold cross validation, achieving an average accuracy of 99.11% with an average error of deletion of 0.0882%.


Author Profile
Van Huong Pham

Academy of Cryptography Techniques Vietnam

Vietnam
Author Profile
Thi Hong van Le

Academy of Cryptography Techniques Vietnam

Vietnam
Author Profile
Quang Huy Vu

Academy of Cryptography Techniques Vietnam

Vietnam

📄 논문 정보

발행 연도 2021년
인용수 0
출판 국가 Vietnam
사이트 ACM
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