The impacts of training data spatial resolution on deep learning in remote sensing

IF 5.7 Q1 ENVIRONMENTAL SCIENCES
Christopher Ardohain, Songlin Fei
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引用次数: 0

Abstract

Deep learning (DL) is ubiquitous in remote sensing analysis with continued evolution in model architectures and advancement of model types. However, DL is still constrained by the need for extensive training datasets, which are costly and time-consuming to produce. One potential solution is adapting training data annotations from different spatial resolutions, though the feasibility of such an application has yet to be tested. In this study, we explore the effects of using forest boundary training data derived from the 3D Elevation Program (3DEP) at 1.5m resolution and the National Land Cover Database (NLCD) at 30m to compare the effects on DL model performance. Our research covers diverse landscapes across 11 counties in Indiana (∼11,636 km2), developing 36 DL models to assess the impact of spatial resolution, model architectures, land cover, and training chip sizes. Our results show that higher-resolution training data yield more accurate models, regardless of imagery resolution, though the performance gap (F1 score) was limited to ∼2.7% even at its most extreme. We also found significant variation in performance based on land cover, with average F1 scores of 0.923 in homogeneous forested areas compared to 0.684 in complex urban settings. Despite similar training times between data sources, chipping 3DEP data took roughly five times longer. We expect that the findings from this study will assist future research in optimizing the development of DL training datasets, selection of source imagery at the proper resolution given training data availability, and application of appropriate model tuning depending on landscape complexity.
训练数据空间分辨率对遥感深度学习的影响
随着模型结构的不断发展和模型类型的不断进步,深度学习在遥感分析中无处不在。然而,深度学习仍然受到大量训练数据集需求的限制,这些数据集的生产成本高,耗时长。一种潜在的解决方案是适应来自不同空间分辨率的训练数据注释,尽管这种应用程序的可行性还有待测试。在这项研究中,我们探讨了使用来自1.5m分辨率的3D高程程序(3DEP)和30m分辨率的国家土地覆盖数据库(NLCD)的森林边界训练数据对DL模型性能的影响。我们的研究涵盖了印第安纳州11个县(约11,636平方公里)的不同景观,开发了36个深度学习模型来评估空间分辨率、模型架构、土地覆盖和训练芯片尺寸的影响。我们的研究结果表明,无论图像分辨率如何,高分辨率的训练数据都会产生更准确的模型,尽管性能差距(F1分数)即使在最极端的情况下也被限制在~ 2.7%。我们还发现,基于土地覆盖的表现存在显著差异,均匀森林地区的平均F1得分为0.923,而复杂城市环境的平均F1得分为0.684。尽管数据源之间的训练时间相似,但3DEP数据的芯片化时间大约是前者的5倍。我们希望这项研究的结果将有助于未来的研究,优化DL训练数据集的开发,在给定训练数据可用性的情况下以适当的分辨率选择源图像,以及根据景观复杂性应用适当的模型调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
12.20
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0.00%
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