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Impact of satellite imagery spatial resolution on land use classification accuracy and modeled water quality

机译:卫星图像空间分辨率对土地利用分类精度和模型水质的影响

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Remote sensing offers an increasingly wide array of imagery with a broad variety of spectral and spatial resolution, but there are relatively few comparisons of how different sources of data impact the accuracy, cost, and utility of analyses. We evaluated the impact of satellite image spatial resolution (1?m from Digital Globe; 30?m from Landsat) on land use classification via ArcGIS Feature Analyst, and on total suspended solids (TSS) load estimates from the Soil and Water Assessment Tool (SWAT) for the Camboriú watershed in Southeastern Brazil. We independently calibrated SWAT models, using both land use map resolutions and short‐term daily streamflow (discharge) and TSS load data from local gauge stations. We then compared the predicted TSS loads with monitoring data outside the model training period. We also estimated the cost difference for land use classification and SWAT model construction and calibration at these two resolutions. Finally, we assessed the value of information (VOI) of the higher‐resolution imagery in estimating the cost‐effectiveness of watershed conservation in reducing TSS at the municipal water supply intake. Land use classification accuracy was 82.3% for 1?m data and 75.1% for 30?m data. We found that models using 1?m data better predicted both annual and peak TSS loads in the full study area, though the 30?m model did better in a sub‐watershed. However, the 1?m data incurred considerably higher costs relative to the 30?m data ($7000 for imagery, plus additional analyst time). Importantly, the choice of spatial resolution affected the estimated return on investment (ROI) in watershed conservation for the municipal water company that finances much of this conservation, although it is unlikely that this would have affected the company's decision to invest in the program. We conclude by identifying key criteria to assist in choosing an appropriate spatial resolution for different contexts.
机译:遥感提供的图像越来越广泛,具有各种各样的光谱和空间分辨率,但是相对不同的数据源如何影响分析的准确性,成本和实用性的比较很少。我们通过ArcGIS Feature Analyst评估了卫星图像空间分辨率(Digital Globe的分辨率为1?m; Landsat的分辨率为30?m)对土地利用分类的影响,以及土壤和水评估工具对总悬浮固体(TSS)负荷估算的影响( SWAT),用于巴西东南部的Camboriú分水岭。我们使用土地使用地图的分辨率以及短期日流量(流量)和本地水位站的TSS负荷数据,独立校准了SWAT模型。然后,我们将预测的TSS负载与模型训练期以外的监视数据进行了比较。我们还以这两种分辨率估算了土地用途分类,SWAT模型构建和校准的成本差异。最后,我们评估了高分辨率图像的信息(VOI)在估计流域保护在减少市政供水口的TSS方面的成本效益方面的价值。 1微米数据的土地利用分类准确度为82.3%,30微米数据的土地利用分类准确度为75.1%。我们发现,使用1?m数据的模型可以更好地预测整个研究区域的年度和高峰TSS负荷,尽管在一个小流域,30?m的模型效果更好。但是,相对于30μm数据,1μm数据的成本要高得多(图像7000美元,外加分析师时间)。重要的是,空间分辨率的选择影响了为大部分自来水公司提供资金的市政自来水公司的流域保护的估计投资回报(ROI),尽管这不太可能会影响公司对该项目的投资决定。最后,我们通过确定关键标准来协助选择适合不同环境的空间分辨率。

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