4.7 Article

Attribute recognition for person re-identification using federated learning at all-in-edge

Journal

INTERNET OF THINGS
Volume 22, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.iot.2023.100793

Keywords

Person re-identification; Edge computing; Federated learning; Transfer learning; Attribute recognition

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The advancement of person re-identification using attribute recognition is hindered by strict data privacy standards, as it requires centralized storage of sensitive personal data in the cloud. This paper proposes an all-in-edge architecture for attribute-based person re-identification, utilizing federated learning and transfer learning methods to minimize communication and computational costs. The paper also introduces a federated aggregation strategy, FedTransferLoss, which achieves higher accuracy compared to traditional algorithms.
The advancement in person re-identification using attribute recognition is constrained by the increasingly strict data privacy standards since it necessitates the centralization of vast amounts of data containing sensitive personal data in the cloud. Cloud-based person re-identification re-quires the transfer of original video information to the servers, causing increased communication costs because of the need for significant bandwidth, resulting in unpredictable timing. This work presents an all-in-edge architecture for attribute-based person re-identification, which deploys training data in edge nodes that support distributed inference. Edge nodes independently learn but collaborate with specific neighboring nodes by sharing information to minimize communication and computational costs through the utilization of federated learning and transfer learning methods. Furthermore, this paper proposes a federated aggregation strategy-FedTransferLoss to obtain optimal global accuracy by using transfer learning to re-train the low-quality local models. Extensive experiments on two prominent pedestrian datasets-PETA and RAP show that FedTransferLoss achieves higher accuracy, recall and precision values compared to the traditional FedAvg algorithm.

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