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Predicting relative species composition within mixed conifer forest pixels using zero-inflated models and Landsat imagery

机译:使用零膨胀模型和Landsat影像预测针叶林混合像素中的相对物种组成

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Ecological and land management applications would often benefit from maps of relative canopy cover of each species present within a pixel, instead of traditional remote-sensing based maps of either dominant species or percent canopy cover without regard to species composition. Widely used statistical models for remote sensing, such as randomForest (RF), support vector machines (SVM), and generalized linear regression (GLM), are problematic for this purpose as they often fail to properly predict the absence of a target species, especially in areas of high vegetation diversity, due to the relative abundance of absence observations (or zero values) in the reference data used to train predictive models. Experience has shown that RF, SVM, and GLM models trained on such reference data produce biased values of PCC, for example, in forested areas absent the target species, PCC is overestimated, while in forested areas where a target species PCC is abundant, PCC tends to be underestimated. We used zero-inflated regression modeling to reduce such bias and better predict PCC-by-species within each pixel in mixed conifer forests. Zero-inflated regression models use a two-step process to first predict the presence or absence of the target species, and then to predict continuous levels of PCC only where the target species is present. We compared the results of three widely used methods (RF, SVM, and GLM) to nine zero-inflated models for their ability to predict continuous PCC for each of five different conifer species in heterogeneous forests of northwestern Montana using Landsat TM and OLI imagery. Our best zero-inflated models resulted in a mean difference of -3.84% to 2.26%, 95% confidence interval of 6.22% to 13.09%, and RMSE of 11.26% to 22.98%, depending on the species. The success of the zero-inflated model was robust across methods tested. Both the zero-inflated and traditional methods were successful in estimating continuous canopy cover, however, the traditional models showed a substantial bias by never correctly predicting the absence of the target species, while the zero-inflated models correctly predicted species absence 57% to 84% of the time, depending on the species. Visual inspection of the predicted maps compared to high-resolution imagery demonstrated that the zero-inflated models also more closely matched the landscape, as traditional models more often incorrectly predicted canopy cover in non-forested areas. Using the zero-inflated process dramatically reduced the bias of the results, allowing end users to make management decisions with increased confidence about where a target species is absent, something not possible with the traditional methods tested. (C) 2015 Elsevier Inc. All rights reserved.
机译:生态和土地管理应用通常会受益于像素内存在的每个物种的相对冠层覆盖图,而不是传统的基于遥感的优势种或冠层覆盖率图,而无需考虑物种组成。为此目的,广泛使用的遥感统计模型(例如randomForest(RF),支持向量机(SVM)和广义线性回归(GLM))存在问题,因为它们通常无法正确预测目标物种的缺失,尤其是在植被多样性高的地区,由于用于训练预测模型的参考数据中相对缺乏的观测值(或零值)。经验表明,根据这些参考数据训练的RF,SVM和GLM模型会产生PCC的偏差值,例如,在缺少目标物种的林区中,PCC被高估,而在目标物种PCC丰富的林区中,PCC往往被低估了。我们使用零膨胀回归模型来减少这种偏差,并更好地预测针叶林混交林中每个像素内的物种PCC。零膨胀回归模型使用两步过程来首先预测目标物种的存在或不存在,然后仅在目标物种存在的地方预测PCC的连续水平。我们将三种广泛使用的方法(RF,SVM和GLM)的结果与九种零膨胀模型进行了比较,它们使用Landsat TM和OLI影像预测了蒙大纳州西北部异质森林中五个针叶树种中每种针叶树种的连续PCC的能力。我们的最佳零膨胀模型得出的平均差为-3.84%至2.26%,95%置信区间为6.22%至13.09%,RMSE为11.26%至22.98%,具体取决于物种。在测试的各种方法中,零膨胀模型的成功都非常可靠。零膨胀模型和传统方法都可以成功地估计连续的树冠覆盖率,但是,传统模型通过从未正确预测目标物种的缺失而显示出很大的偏差,而零膨胀模型正确地预测了物种的缺失57%至84时间百分比,取决于物种。与高分辨率图像相比,对预期地图的视觉检查表明,零膨胀模型也与景观更加匹配,因为传统模型经常错误地预测非林区的树冠覆盖。使用零膨胀过程可以极大地减少结果的偏差,使最终用户可以更有把握地确定目标物种不在何处,从而做出管理决策,而传统测试方法则无法做到这一点。 (C)2015 Elsevier Inc.保留所有权利。

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