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Fsup.2SOD: A Federated Few-Shot Object Detection
by
Zhang, Shuzhuang
, Li, Peng
, Qing, Chen
, Zhang, Tianyu
in
Information management
/ Li Peng
/ Privacy
2025
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Fsup.2SOD: A Federated Few-Shot Object Detection
by
Zhang, Shuzhuang
, Li, Peng
, Qing, Chen
, Zhang, Tianyu
in
Information management
/ Li Peng
/ Privacy
2025
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Journal Article
Fsup.2SOD: A Federated Few-Shot Object Detection
2025
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Overview
With the popularity of edge computation, object detection applications face challenges of limited data volume and data privacy. To address these, we propose a federated few-shot object detection framework, F[sup.2]SOD. It involves three steps: collaborative base model training with base class data, novel data augmentation via an improved diffusion model, and collaborative base model fine-tuning for novel model using augmented data. Specifically, we present a data augmentation method based on diffusion models with a twofold-tag prompt construction and object location embedding. In addition, we present distributed framework for training base and novel models, where the base model integrates the Squeeze-and-Excitation attention mechanism into the feature re-weighting module. Experiments on public datasets demonstrate that F[sup.2]SOD achieves efficient few-shot object detection, outperforming State-of-the-Art methods in both accuracy and efficiency.
Publisher
MDPI AG
Subject
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