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Auteurs principaux: Chen, Shengchao, Shu, Ting, Zhao, Huan, Wang, Jiahao, Ren, Sufen, Yang, Lina
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2401.01493
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author Chen, Shengchao
Shu, Ting
Zhao, Huan
Wang, Jiahao
Ren, Sufen
Yang, Lina
author_facet Chen, Shengchao
Shu, Ting
Zhao, Huan
Wang, Jiahao
Ren, Sufen
Yang, Lina
contents Remote Sensing Target Fine-grained Classification (TFGC) is of great significance in both military and civilian fields. Due to location differences, growth in data size, and centralized server storage constraints, these data are usually stored under different databases across regions/countries. However, privacy laws and national security concerns constrain researchers from accessing these sensitive remote sensing images for further analysis. Additionally, low-resource remote sensing devices encounter challenges in terms of communication overhead and efficiency when dealing with the ever-increasing data and model scales. To solve the above challenges, this paper proposes a novel Privacy-Reserving TFGC Framework based on Federated Learning, dubbed PRFL. The proposed framework allows each client to learn global and local knowledge to enhance the local representation of private data in environments with extreme statistical heterogeneity (non. Independent and Identically Distributed, IID). Thus, it provides highly customized models to clients with differentiated data distributions. Moreover, the framework minimizes communication overhead and improves efficiency while ensuring satisfactory performance, thereby enhancing robustness and practical applicability under resource-scarce conditions. We demonstrate the effectiveness of the proposed PRFL on the classical TFGC task by leveraging four public datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2401_01493
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Free Lunch for Federated Remote Sensing Target Fine-Grained Classification: A Parameter-Efficient Framework
Chen, Shengchao
Shu, Ting
Zhao, Huan
Wang, Jiahao
Ren, Sufen
Yang, Lina
Machine Learning
Artificial Intelligence
Cryptography and Security
Remote Sensing Target Fine-grained Classification (TFGC) is of great significance in both military and civilian fields. Due to location differences, growth in data size, and centralized server storage constraints, these data are usually stored under different databases across regions/countries. However, privacy laws and national security concerns constrain researchers from accessing these sensitive remote sensing images for further analysis. Additionally, low-resource remote sensing devices encounter challenges in terms of communication overhead and efficiency when dealing with the ever-increasing data and model scales. To solve the above challenges, this paper proposes a novel Privacy-Reserving TFGC Framework based on Federated Learning, dubbed PRFL. The proposed framework allows each client to learn global and local knowledge to enhance the local representation of private data in environments with extreme statistical heterogeneity (non. Independent and Identically Distributed, IID). Thus, it provides highly customized models to clients with differentiated data distributions. Moreover, the framework minimizes communication overhead and improves efficiency while ensuring satisfactory performance, thereby enhancing robustness and practical applicability under resource-scarce conditions. We demonstrate the effectiveness of the proposed PRFL on the classical TFGC task by leveraging four public datasets.
title Free Lunch for Federated Remote Sensing Target Fine-Grained Classification: A Parameter-Efficient Framework
topic Machine Learning
Artificial Intelligence
Cryptography and Security
url https://arxiv.org/abs/2401.01493