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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >APPLICATION OF DEEP LEARNING IN GLOBELAND30-2010 PRODUCT REFINEMENT
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APPLICATION OF DEEP LEARNING IN GLOBELAND30-2010 PRODUCT REFINEMENT

机译:深层学习在全球范围内的应用30-2010产品完善

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GlobeLand30, as one of the best Global Land Cover (GLC) product at 30-m resolution, has been widely used in many research fields. Due to the significant spectral confusion among different land cover types and limited textual information of Landsat data, the overall accuracy of GlobeLand30 is about 80?%. Although such accuracy is much higher than most other global land cover products, it cannot satisfy various applications. There is still a great need of an effective method to improve the quality of GlobeLand30. The explosive high-resolution satellite images and remarkable performance of Deep Learning on image classification provide a new opportunity to refine GlobeLand30. However, the performance of deep leaning depends on quality and quantity of training samples as well as model training strategy. Therefore, this paper 1) proposed an automatic training sample generation method via Google earth to build a large training sample set; and 2) explore the best training strategy for land cover classification using GoogleNet (Inception V3), one of the most widely used deep learning network. The result shows that the fine-tuning from first layer of Inception V3 using rough large sample set is the best strategy. The retrained network was then applied in one selected area from Xi’an city as a case study of GlobeLand30 refinement. The experiment results indicate that the proposed approach with Deep Learning and google earth imagery is a promising solution for further improving accuracy of GlobeLand30.
机译:作为30微米分辨率的最佳全球土地覆盖(GLC)产品之一,GlobeLand30已被广泛用于许多研究领域。由于不同的土地覆盖类型之间存在明显的光谱混淆,并且Landsat数据的文本信息有限,因此GlobeLand30的总体准确性约为80%。尽管这样的精度比大多数其他全球陆地覆盖产品要高得多,但是它不能满足各种应用。仍然非常需要一种有效的方法来提高GlobeLand30的质量。爆炸性的高分辨率卫星图像和深度学习在图像分类方面的出色表现为完善GlobeLand30提供了新的机会。但是,深度学习的性能取决于训练样本的质量和数量以及模型训练策略。因此,本文1)提出了一种通过Google Earth自动生成训练样本的方法,以建立一个大型训练样本集。和2)使用GoogleNet(Inception V3)探索最理想的土地覆盖分类培训策略,GoogleNet是应用最广泛的深度学习网络之一。结果表明,使用粗大样本集对Inception V3的第一层进行微调是最佳策略。然后,将经过重新训练的网络应用于西安市的一个选定区域,作为GlobeLand30改进的案例研究。实验结果表明,与深度学习和谷歌地球图像一起提出的方法是进一步提高GlobeLand30准确性的有前途的解决方案。

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