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Mapping Invasive Tamarisk (Tamarix): A Comparison of Single-Scene and Time-Series Analyses of Remotely Sensed Data

机译:映射侵入性Ta柳(Tamarix):遥感数据的单场景和时间序列分析的比较

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In this study, we tested the Maximum Entropy model (Maxent) for its application and performance in remotely sensing invasive Tamarix sp. Six Landsat 7 ETM+ satellite scenes and a suite of vegetation indices at different times of the growing season were selected for our study area along the Arkansas River in Colorado. Satellite scenes were selected for April, May, June, August, September, and October and tested in single-scene and time-series analyses. The best model was a time-series analysis fit with all spectral variables, which had an AUC = 0.96, overall accuracy = 0.90, and Kappa = 0.79. The top predictor variables were June tasselled cap wetness, September tasselled cap wetness, and October band 3. A second time-series analysis, where the variables that were highly correlated and demonstrated low predictive strengths were removed, was the second best model. The third best model was the October single-scene analysis. Our results may prove to be an effective approach for mapping Tamarix sp., which has been a challenge for resource managers. Of equal importance is the positive performance of the Maxent model in handling remotely sensed datasets.
机译:在这项研究中,我们测试了最大熵模型(Maxent)在遥感Tamarix sp。中的应用和性能。我们沿着科罗拉多州的阿肯色河沿岸的研究区域选择了六个Landsat 7 ETM +卫星场景和一套在生长季节不同时间的植被指数。选择了4月,5月,6月,8月,9月和10月的卫星场景,并在单场景和时间序列分析中进行了测试。最好的模型是对所有光谱变量进行时间序列分析,其AUC = 0.96,总体准确度= 0.90,Kappa = 0.79。最佳预测变量是六月流水线帽湿度,九月流水线帽湿度和十月带3。第二个时间序列分析是第二好的模型,其中高度相关的变量和低预测强度的变量被删除。第三好的模型是十月份的单场景分析。我们的结果可能被证明是映射Tamarix sp。的有效方法,这对资源管理者来说是一个挑战。同样重要的是,Maxent模型在处理遥感数据集方面的积极表现。

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