首页> 外文会议>Conference on Geoinformation Science Symposium;Society of Photo-Optical Instrumentation Engineers >Performance of Various Speckle Filter Methods in Modelling Forest Aboveground Biomass using Sentinel-1 Data: Case Study of Barru Regency, South Sulawesi
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Performance of Various Speckle Filter Methods in Modelling Forest Aboveground Biomass using Sentinel-1 Data: Case Study of Barru Regency, South Sulawesi

机译:使用Sentinel-1数据对森林地上生物量进行建模的各种散斑过滤方法的性能:南苏拉威西岛Barru Regency的案例研究

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Noise in SAR imagery was produced due to different backscatter responses from the objects in the earth’s surface. Thisresulted in a grainy image, usually known as “salt and pepper” noise, which reduces the capability to identify an objectfrom radar imagery. Therefore, speckle filtering was conducted to decrease this noise from SAR imagery. This studyaims to assess the performance of different types of speckle filters, especially when used to construct forest abovegroundbiomass (AGB) model from Sentinel-1 data in Barru Regency, South Sulawesi. There were 4 filters used in this studyi.e. Frost, Gamma-MAP, Median, and Refined Lee. AGBmodelwas constructed by using dual-polarization C-band SARof Sentinel- 1 data and ground inventory plots. 23 plots were collected in the field and the allometric equation was usedto calculate the biomass value of the field survey data then cross-validation models were generated by using biomassvalue and backscatter data from VV and VH polarization. Quality control was performed by comparing the coefficientof determination (R2) of those filters. The result shows that Frost filter, especially on VH polarization was chosen as thebest- fit model to estimate the AGB based on the higher value of R2 (0.3464158) and RMSE (33.5231). The resultdemonstrated the Frost filter as the best filter for retaining and/or enhancing the backscatter signal in Sentinel-1 data tobe used in vegetation biophysical modelling.
机译:SAR图像中的噪声是由于来自地球表面物体的不同反向散射响应而产生的。这 导致出现颗粒状图像,通常称为“盐和胡椒”噪声,从而降低了识别物体的能力 来自雷达图像。因此,进行了斑点滤波以减少来自SAR图像的噪声。这项研究 旨在评估不同类型的斑点过滤器的性能,尤其是在用于构建地上森林时 南苏拉威西省Barru Regency的Sentinel-1数据得出的生物量(AGB)模型。本研究中使用了4种过滤器 即Frost,Gamma-MAP,Median和Refined Lee。通过使用双极化C波段SAR构建AGB模型 Sentinel-1数据和地面库存图。在野外收集了23个样地并使用了异速方程 计算现场调查数据的生物量值,然后使用生物量生成交叉验证模型 VV和VH极化产生的值和反向散射数据。通过比较系数进行质量控制 这些过滤器的确定(R2)。结果表明,弗罗斯特滤波器,特别是在VH偏振下被选作 最佳拟合模型基于R2(0.3464158)和RMSE(33.5231)的较高值来估算AGB。结果 展示了Frost滤波器是在Sentinel-1数据中保留和/或增强反向散射信号的最佳滤波器, 用于植被生物物理建模。

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