TY - JOUR
T1 - EPDL
T2 - An efficient and privacy-preserving deep learning for crowdsensing
AU - Xu, Chang
AU - Jin, Guoxie
AU - Zhu, Liehuang
AU - Zhang, Chuan
AU - Jia, Yu
N1 - Publisher Copyright:
© 2022, The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature.
PY - 2022/11
Y1 - 2022/11
N2 - Deep learning has achieved remarkable success in the field of crowdsensing. The success of deep learning is inseparable from the amount of data. However, since the data uploaded by users involved in deep learning are usually correlated with individuals’ personal information, data owners may be reluctant to provide their data. Existing works on privacy-preserving deep learning primarily rely on fully homomorphic encryption primitives or oblivious transfer, which generates a lot of computation and communication costs to the participating entities. In this paper, we propose a non-interactive privacy-preserving deep learning scheme, named EPDL, to solve the above privacy and efficiency issues which means we can train the model more efficiently while protecting the privacy of image data. By employing a cloud platform and exploiting the homomorphic properties of an additively homomorphic cryptosystem, EPDL enables the deep learning models to be trained in an efficient and privacy-preserving manner without any data owner involved in the training process. Detailed security analysis demonstrates the privacy of data and models is safeguarded by EPDL. Extensive experiments based on real-world data sets show EPDL outperforms existing schemes whether in computation costs or communication overhead.
AB - Deep learning has achieved remarkable success in the field of crowdsensing. The success of deep learning is inseparable from the amount of data. However, since the data uploaded by users involved in deep learning are usually correlated with individuals’ personal information, data owners may be reluctant to provide their data. Existing works on privacy-preserving deep learning primarily rely on fully homomorphic encryption primitives or oblivious transfer, which generates a lot of computation and communication costs to the participating entities. In this paper, we propose a non-interactive privacy-preserving deep learning scheme, named EPDL, to solve the above privacy and efficiency issues which means we can train the model more efficiently while protecting the privacy of image data. By employing a cloud platform and exploiting the homomorphic properties of an additively homomorphic cryptosystem, EPDL enables the deep learning models to be trained in an efficient and privacy-preserving manner without any data owner involved in the training process. Detailed security analysis demonstrates the privacy of data and models is safeguarded by EPDL. Extensive experiments based on real-world data sets show EPDL outperforms existing schemes whether in computation costs or communication overhead.
KW - Homomorphic encryption
KW - Neural network
KW - Privacy preserving
UR - http://www.scopus.com/inward/record.url?scp=85135810310&partnerID=8YFLogxK
U2 - 10.1007/s12083-022-01354-z
DO - 10.1007/s12083-022-01354-z
M3 - Article
AN - SCOPUS:85135810310
SN - 1936-6442
VL - 15
SP - 2529
EP - 2541
JO - Peer-to-Peer Networking and Applications
JF - Peer-to-Peer Networking and Applications
IS - 6
ER -