Privatemail: Supervised Manifold Learning Of Deep Features With Differential Privacy For Image Retrieval | Awesome Similarity Search Papers

Privatemail: Supervised Manifold Learning Of Deep Features With Differential Privacy For Image Retrieval

Praneeth Vepakomma, Julia Balla, Ramesh Raskar · Proceedings of the AAAI Conference on Artificial Intelligence · 2021

Differential Privacy offers strong guarantees such as immutable privacy under post processing. Thus it is often looked to as a solution to learning on scattered and isolated data. This work focuses on supervised manifold learning, a paradigm that can generate fine-tuned manifolds for a target use case. Our contributions are two fold. 1) We present a novel differentially private method \textit{PrivateMail} for supervised manifold learning, the first of its kind to our knowledge. 2) We provide a novel private geometric embedding scheme for our experimental use case. We experiment on private “content based image retrieval”

  • embedding and querying the nearest neighbors of images in a private manner - and show extensive privacy-utility tradeoff results, as well as the computational efficiency and practicality of our methods.
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