2022
DOI: 10.48550/arxiv.2207.11759
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Spatial-Temporal Federated Learning for Lifelong Person Re-identification on Distributed Edges

Abstract: Data drift is a thorny challenge when deploying person re-identification (ReID) models into real-world devices, where the data distribution is significantly different from that of the training environment and keeps changing. To tackle this issue, we propose a federated spatial-temporal incremental learning approach, named FedSTIL, which leverages both lifelong learning and federated learning to continuously optimize models deployed on many distributed edge clients. Unlike previous efforts, FedSTIL aims to mine… Show more

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