使用Sentinel-1图像绘制城市地区的绿色基础设施地图

IF 2.7 2区 农林科学 Q1 FORESTRY
M. Gašparović, D. Dobrinić
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引用次数: 6

摘要

合成孔径雷达(SAR)图像(如哨兵-1(S1)图像)的高时间分辨率为监测城市地区的绿色植被和生成土地覆盖分类图创造了新的可能性。本研究评估了SAR图像不同预处理步骤对分类精度的影响。机器学习(ML)方法被应用于三个不同的研究领域:随机森林(RF)、支持向量机(SVM)和极端梯度增强(XGB)。由于雷达图像中散斑噪声的存在是不可避免的,因此对不同的自适应滤波器进行了研究。使用S1图像的后向散射值,SVM分类器实现了63.14%的平均总体准确度(OA)和0.50的Kappa系数(Kappa)。使用具有窗口大小为5×5(Lee5)的Lee滤波器的SVM分类器来减少斑点,OA和Kappa的平均值分别为73.86%和0.64。通过从灰度共生矩阵(GLCM)计算纹理特征,获得了LCC的额外增加。对于平均OA和Kappa值,使用SVM分类器和Lee5滤波器提取的GLCM纹理特征获得的最高分类精度分别为78.32%和0.69。本研究通过评估各种辐射和纹理特征来改进LCC,并证实了应用SVM分类器的能力。对于监督分类,SVM方法优于RF和XGB方法,尽管SVM需要最高的计算时间,而XGB执行最快。这些结果为城市地区的绿色基础设施测绘提供了SAR图像的预处理步骤。未来的研究应该涉及多时相SAR数据的使用,以及本研究中描述的预处理步骤和ML算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Green Infrastructure Mapping in Urban Areas Using Sentinel-1 Imagery
High temporal resolution of synthetic aperture radar (SAR) imagery (e.g., Sentinel-1 (S1) imagery) creates new possibilities for monitoring green vegetation in urban areas and generating land-cover classification (LCC) maps. This research evaluates how different pre-processing steps of SAR imagery affect classification accuracy. Machine learning (ML) methods were applied in three different study areas: random forest (RF), support vector machine (SVM), and extreme gradient boosting (XGB). Since the presence of the speckle noise in radar imagery is inevitable, different adaptive filters were examined. Using the backscattering values of the S1 imagery, the SVM classifier achieved a mean overall accuracy (OA) of 63.14%, and a Kappa coefficient (Kappa) of 0.50. Using the SVM classifier with a Lee filter with a window size of 5×5 (Lee5) for speckle reduction, mean values of 73.86% and 0.64 for OA and Kappa were achieved, respectively. An additional increase in the LCC was obtained with texture features calculated from a grey-level co-occurrence matrix (GLCM). The highest classification accuracy obtained for the extracted GLCM texture features using the SVM classifier, and Lee5 filter was 78.32% and 0.69 for the mean OA and Kappa values, respectively. This study improved LCC with an evaluation of various radiometric and texture features and confirmed the ability to apply an SVM classifier. For the supervised classification, the SVM method outperformed the RF and XGB methods, although the highest computational time was needed for the SVM, whereas XGB performed the fastest. These results suggest pre-processing steps of the SAR imagery for green infrastructure mapping in urban areas. Future research should address the use of multitemporal SAR data along with the pre-processing steps and ML algorithms described in this research.
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来源期刊
CiteScore
5.20
自引率
12.50%
发文量
23
审稿时长
>12 weeks
期刊介绍: Croatian Journal of Forest Engineering (CROJFE) is a refereed journal distributed internationally, publishing original research articles concerning forest engineering, both theoretical and empirical. The journal covers all aspects of forest engineering research, ranging from basic to applied subjects. In addition to research articles, preliminary research notes and subject reviews are published. Journal Subjects and Fields: -Harvesting systems and technologies- Forest biomass and carbon sequestration- Forest road network planning, management and construction- System organization and forest operations- IT technologies and remote sensing- Engineering in urban forestry- Vehicle/machine design and evaluation- Modelling and sustainable management- Eco-efficient technologies in forestry- Ergonomics and work safety
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