CVMay 24, 2024

Transformer-based Federated Learning for Multi-Label Remote Sensing Image Classification

arXiv:2405.15405v118 citationsh-index: 8IGARSS
Originality Synthesis-oriented
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This work provides guidelines for selecting transformer architectures in federated learning for remote sensing, addressing domain-specific issues with non-IID data.

The paper tackles the challenge of non-IID data in federated learning for multi-label remote sensing image classification by evaluating transformer architectures, finding they improve generalization but increase training and aggregation complexities.

Federated learning (FL) aims to collaboratively learn deep learning model parameters from decentralized data archives (i.e., clients) without accessing training data on clients. However, the training data across clients might be not independent and identically distributed (non-IID), which may result in difficulty in achieving optimal model convergence. In this work, we investigate the capability of state-of-the-art transformer architectures (which are MLP-Mixer, ConvMixer, PoolFormer) to address the challenges related to non-IID training data across various clients in the context of FL for multi-label classification (MLC) problems in remote sensing (RS). The considered transformer architectures are compared among themselves and with the ResNet-50 architecture in terms of their: 1) robustness to training data heterogeneity; 2) local training complexity; and 3) aggregation complexity under different non-IID levels. The experimental results obtained on the BigEarthNet-S2 benchmark archive demonstrate that the considered architectures increase the generalization ability with the cost of higher local training and aggregation complexities. On the basis of our analysis, some guidelines are derived for a proper selection of transformer architecture in the context of FL for RS MLC. The code of this work is publicly available at https://git.tu-berlin.de/rsim/FL-Transformer.

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