土地覆盖分类的多模态遥感基准数据集

Jing Yao, D. Hong, Lianru Gao, J. Chanussot
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引用次数: 1

摘要

在过去的几十年里,已经开发了大量的特征提取和分类算法,用于利用遥感数据进行土地覆盖制图。虽然这些方法的性能逐渐提高,但由于缺乏高质量和多样化的遥感基准数据集,特别是对于多模式情况,它们的潜力不可避免地遇到瓶颈。因此,这在很大程度上限制了相应方法的发展和土地覆被分类的实际应用。为此,本文旨在引入并构建多个多模态遥感基准数据集,用于土地覆盖分类。此外,两个新的多模式土地覆盖分类基准数据集,即柏林和奥格斯堡,是公开可用的。在两个数据集上进行了实验,以评估几种多模态特征学习和分类方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Remote Sensing Benchmark Datasets for Land Cover Classification
Over the past few decades, a large collection of feature ex-traction and classification algorithms have been developed for land cover mapping using remote sensing data. Although these methods have shown the gradually-increasing performance, their potential inevitably meets the bottleneck due to the lack of high-quality and diversified remote sensing bench-mark datasets, particularly for the multimodal cases. Accordingly, this, to a larger extent, limits the development of the corresponding methodologies and the practical application of land cover classification. To this end, we aim in this pa-per to introduce and build several multimodal remote sensing benchmark datasets for land cover classification. Further-more, two new multimodal land cover classification bench-mark datasets, i.e., Berlin and Augsburg, are openly available. Experiments are conducted on the two datasets for evaluating the performance of several multimodal feature learning and classification methods.
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