Privacy-Preserving Visual Learning Using Doubly Permuted Homomorphic Encryption
Title | Privacy-Preserving Visual Learning Using Doubly Permuted Homomorphic Encryption |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Yonetani, R., Boddeti, V. N., Kitani, K. M., Sato, Y. |
Conference Name | 2017 IEEE International Conference on Computer Vision (ICCV) |
ISBN Number | 978-1-5386-1032-9 |
Keywords | AI, artificial intelligence, Computer vision, cryptography, data privacy, Distributed databases, doubly permuted homomorphic encryption, Encryption, high-dimensional data, homomorphic cryptosystem, Human Behavior, human factor, human factors, image processing, learning (artificial intelligence), learning procedure, leveraging distributed private image data, multiple classifiers, novel efficient encryption scheme, privacy, privacy-preserving framework, privacy-preserving methods, privacy-preserving visual learning, private data, private information, pubcrawl, resilience, Resiliency, Scalability, sparse data, Videos, visual classifiers, visual recognition methods, visualization |
Abstract | We propose a privacy-preserving framework for learning visual classifiers by leveraging distributed private image data. This framework is designed to aggregate multiple classifiers updated locally using private data and to ensure that no private information about the data is exposed during and after its learning procedure. We utilize a homomorphic cryptosystem that can aggregate the local classifiers while they are encrypted and thus kept secret. To overcome the high computational cost of homomorphic encryption of high-dimensional classifiers, we (1) impose sparsity constraints on local classifier updates and (2) propose a novel efficient encryption scheme named doublypermuted homomorphic encryption (DPHE) which is tailored to sparse high-dimensional data. DPHE (i) decomposes sparse data into its constituent non-zero values and their corresponding support indices, (ii) applies homomorphic encryption only to the non-zero values, and (iii) employs double permutations on the support indices to make them secret. Our experimental evaluation on several public datasets shows that the proposed approach achieves comparable performance against state-of-the-art visual recognition methods while preserving privacy and significantly outperforms other privacy-preserving methods. |
URL | http://ieeexplore.ieee.org/document/8237487/ |
DOI | 10.1109/ICCV.2017.225 |
Citation Key | yonetani_privacy-preserving_2017 |
- resilience
- novel efficient encryption scheme
- privacy
- privacy-preserving framework
- privacy-preserving methods
- privacy-preserving visual learning
- private data
- private information
- pubcrawl
- multiple classifiers
- Resiliency
- Scalability
- sparse data
- Videos
- visual classifiers
- visual recognition methods
- visualization
- homomorphic cryptosystem
- Artificial Intelligence
- computer vision
- Cryptography
- data privacy
- Distributed databases
- doubly permuted homomorphic encryption
- encryption
- high-dimensional data
- AI
- Human behavior
- human factor
- Human Factors
- Image Processing
- learning (artificial intelligence)
- learning procedure
- leveraging distributed private image data