Federated learning meets remote sensing

被引:1
|
作者
Moreno-Alvarez, Sergio [1 ]
Paoletti, Mercedes E. [2 ]
Sanchez-Fernandez, Andres J. [3 ]
Rico-Gallego, Juan A. [4 ]
Han, Lirong [2 ]
Haut, Juan M. [2 ]
机构
[1] Univ Nacl Educ Distancia, Dept Comp Languages & Syst, Madrid 28040, Spain
[2] Univ Extremadura, Escuela Politecn, Dept Technol Comp & Commun, Caceres 10003, Spain
[3] Univ Extremadura, Escuela Politecn, Dept Comp Syst Engn & Telemat, Caceres 10003, Spain
[4] Fdn Comp & Adv Technol Extremadura COMPUTAEX, Extremadura Ctr Res Technol Innovat & Supercomp Ce, Caceres 10071, Spain
关键词
Federated learning; Remote sensing; Crowd-sourced data; Earth observation; Deep neural networks; Image classification; SUPPORT-VECTOR-MACHINE; NEURAL-NETWORKS; IMAGE CLASSIFICATION; RANDOM FOREST; LAND-COVER; METAANALYSIS; CHALLENGES; RESNET; MODEL;
D O I
10.1016/j.eswa.2024.124583
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Remote sensing (RS) imagery provides invaluable insights into characterizing the Earth's land surface within the scope of Earth observation (EO). Technological advances in capture instrumentation, coupled with the rise in the number of EO missions aimed at data acquisition, have significantly increased the volume of accessible RS data. This abundance of information has alleviated the challenge of insufficient training samples, a common issue in the application of machine learning (ML) techniques. In this context, crowd-sourced data play a crucial role in gathering diverse information from multiple sources, resulting in heterogeneous datasets that enable applications to harness a more comprehensive spatial coverage of the surface. However, the sensitive nature of RS data requires ensuring the privacy of the complete collection. Consequently, federated learning (FL) emerges as a privacy-preserving solution, allowing collaborators to combine such information from decentralized private data collections to build efficient global models. This paper explores the convergence between the FL and RS domains, specifically in developing data classifiers. To this aim, an extensive set of experiments is conducted to analyze the properties and performance of novel FL methodologies. The main emphasis is on evaluating the influence of such heterogeneous and disjoint data among collaborating clients. Moreover, scalability is evaluated for a growing number of clients, and resilience is assessed against Byzantine attacks. Finally, the work concludes with future directions and serves as the opening of a new research avenue for developing efficient RS applications under the FL paradigm. The source code is publicly available at https://github.com/hpc-unex/FLmeetsRS.
引用
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页数:18
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