Pure data correction enhancing remote sensing image classification with a lightweight ensemble model.

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Tác giả: Yingying Duan, Fang Gan, Jinling Liu, Huaxiang Song, Wei Wang, Hanglu Xie, Xinyi Xie

Ngôn ngữ: eng

Ký hiệu phân loại: 621.3678 Electrical, magnetic, optical, communications, computer engineering; electronics, lighting

Thông tin xuất bản: England : Scientific reports , 2025

Mô tả vật lý:

Bộ sưu tập: NCBI

ID: 102620

The classification of remote sensing images is inherently challenging due to the complexity, diversity, and sparsity of the data across different image samples. Existing advanced methods often require substantial modifications to model architectures to achieve optimal performance, resulting in complex frameworks that are difficult to adapt. To overcome these limitations, we propose a lightweight ensemble method, enhanced by pure data correction, called the Exceptionally Straightforward Ensemble. This approach eliminates the need for extensive structural modifications to models. A key innovation in our method is the introduction of a novel strategy, quantitative augmentation, implemented through a plug-and-play module. This strategy effectively corrects feature distributions across remote sensing data, significantly improving the performance of Convolutional Neural Networks and Vision Transformers beyond traditional data augmentation techniques. Furthermore, we propose a straightforward algorithm to generate an ensemble network composed of two components, serving as the proposed lightweight classifier. We evaluate our method on three well-known datasets, with results demonstrating that our ensemble models outperform 48 state-of-the-art methods published since 2020, excelling in accuracy, inference speed, and model compactness. Specifically, our models achieve an overall accuracy of up to 96.8%, representing a 1.1% improvement on the challenging NWPU45 dataset. Moreover, the smallest model in our ensemble reduces parameters by up to 90% and inference time by 74%. Notably, our approach significantly enhances the performance of Convolutional Neural Networks and Vision Transformers, even with limited training data, thus alleviating the performance dependence on large-scale datasets. In summary, our data-driven approach offers an efficient, accessible solution for remote sensing image classification, providing an elegant alternative for researchers in geoscience fields who may have limited time or resources for model optimization.
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