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Federated Visualization: A Privacy-preserving Strategy for Aggregated Visual Query

Federated Visualization: A Privacy-preserving Strategy for Aggregated Visual Query

Abstract

We present a novel privacy preservation strategy for aggregated visual query of decentralized data. The key idea is to imitate the flowchart of the federated learning framework, and reformulate the visualization process within a federated infrastructure. The federation of visualization is fulfilled by leveraging a shared global module that composes the encrypted externalizations of transformed visual features of data pieces in local modules. We design two implementations of federated visualization: a prediction-based scheme, and a query-based scheme. We demonstrate the effectiveness of our approach with a set of visual forms, and verify its robustness with evaluations. We report the value of federated visualization in real scenarios with an expert review.

Publication
IEEE Transactions on Visualization and Computer Graphics