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Multimodal remote sensing benchmark datasets for land cover classification with a shared and specific feature learning model

机译:具有共享和特定特征学习模型的土地覆盖分类的多模式遥感基准数据集

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摘要

As remote sensing (RS) data obtained from different sensors become available largely and openly, multimodal data processing and analysis techniques have been garnering increasing interest in the RS and geoscience community. However, due to the gap between different modalities in terms of imaging sensors, resolutions, and contents, embedding their complementary information into a consistent, compact, accurate, and discriminative representation, to a great extent, remains challenging. To this end, we propose a shared and specific feature learning (S2FL) model. S2FL is capable of decomposing multimodal RS data into modality-shared and modality-specific components, enabling the information blending of multi-modalities more effectively, particularly for heterogeneous data sources. Moreover, to better assess multimodal baselines and the newly-proposed S2FL model, three multimodal RS benchmark datasets, i.e., Houston2013 - hyperspectral and multispectral data, Berlin - hyperspectral and synthetic aperture radar (SAR) data, Augsburg - hyperspectral, SAR, and digital surface model (DSM) data, are released and used for land cover classification. Extensive experiments conducted on the three datasets demonstrate the superiority and advancement of our S2FL model in the task of land cover classification in comparison with previously-proposed state-of-the-art baselines. Furthermore, the baseline codes and datasets used in this paper will be made available freely at https://github.com/danfenghong/ISPRS_S2FL.
机译:由于从不同传感器获得的遥感(RS)数据很大程度上和公开地获得,多式联数据处理和分析技术已经在RS和地球科学群落中获得了越来越多的兴趣。然而,由于在成像传感器,分辨率和内容方面的不同方式之间的差距,在很大程度上嵌入了它们的互补信息将其互补,准确,歧视性的表示仍然存在挑战性。为此,我们提出了共享和特定的特征学习(S2FL)模型。 S2FL能够将多媒体RS数据分解成模态共享和模态组件,使得更有效地能够更有效地混合多模态,特别是对于异构数据源。此外,为了更好地评估多模式基线和新建的S2FL模型,三个多模式RS基准数据集,即HOUSTON2013 - 超光线和多光谱数据,柏林 - 高光谱和合成孔径雷达(SAR)数据,Augsburg - Hyperspectral,SAR和Digital表面模型(DSM)数据被释放并用于土地覆盖分类。在三个数据集上进行的广泛实验表明了我们的S2FL模型在与先前提出的最先进的基线相比的土地覆盖分类任务中的优势和进展。此外,本文中使用的基线代码和数据集将在https://github.com/danfenghong/isprs_s2fl上免费提供。

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