首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >A comprehensive evaluation of disturbance agent classification approaches: Strengths of ensemble classification, multiple indices, spatio-temporal variables, and direct prediction
【24h】

A comprehensive evaluation of disturbance agent classification approaches: Strengths of ensemble classification, multiple indices, spatio-temporal variables, and direct prediction

机译:干扰代理分类方法的综合评估:集成分类的优势,多个指标,时空变量和直接预测

获取原文
获取原文并翻译 | 示例
       

摘要

Landsat time series images are used for the detection of forest disturbance and the classification of causal agents. Various studies have classified disturbance agents with respect to forest disturbance detected using Landsat time series images. However, the accuracy of the finally classified disturbance agents in different approaches is rarely evaluated. In this study, we investigated the effectiveness of using ensemble classification, and multiple spectral and spatio-temporal information for the accuracy of the classification of disturbance agents in two-stage prediction (i.e., disturbance agents are classified with respect to the detected disturbance) and direct prediction (i.e., disturbance agents are directly classified from Landsat temporal information). Predictor variables were derived from the results of the trajectory-based temporal segmentation of five spectral indices using an annual Landsat time series (2000-2018). We compared six approaches of classifying disturbance agents. For two-stage prediction, we investigated four disturbance detection approaches: threshold-based detection with a single spectral index, random forest (RF) model with a single spectral index, RF model with multiple spectral indices, and RF model with spatio-temporal variables. The detected disturbance pixels were aggregated to disturbance patches and classified into disturbance agents. For direct prediction, two RF models one with only temporal variables and the other with spatio-temporal variables were constructed to classify pixel-based disturbance agents. The overall accuracy of the RF model using spatio-temporal variables for direct prediction was 92.4% and significantly higher than that of the RF model for two-stage prediction (90.9%). The use of an RF model based only on a single spectral index in disturbance detection was not effective for improving accuracy compared with threshold-based detection; however, the use of an RF model based on multiple spectral indices in disturbance detection improved the accuracy of the final classification of disturbance agents. Introducing spatial variables in RF models was effective for improving the overall classification accuracy in pixel-based direct prediction. However, it was not necessary in two-stage prediction because of spatial information contained in the patches. Although a spatially discontinuous appearance was observed for the RF model for directly classifying disturbance agents, this could be an alternative approach to two-stage prediction when considering the relative classification performance and simplicity of implementation.
机译:Landsat时间序列图像用于检测森林扰动和病因。各种研究针对使用Landsat时间序列图像检测到的森林干扰对干扰因素进行了分类。但是,很少评估最终分类的干扰剂在不同方法中的准确性。在这项研究中,我们调查了使用集成分类的有效性,以及在两个阶段的预测中使用多种频谱和时空信息来确定干扰源分类的准确性(即,针对检测到的干扰对干扰源进行了分类)和直接预测(即,从Landsat时间信息中直接对干扰源进行分类)。使用年度Landsat时间序列(2000-2018),从基于轨迹的五个光谱指数的时间分段结果中得出预测变量。我们比较了六种分类干扰物的方法。对于两阶段预测,我们研究了四种干扰检测方法:具有单个光谱指数的基于阈值的检测,具有单个光谱指数的随机森林(RF)模型,具有多个光谱指数的RF模型以及具有时空变量的RF模型。将检测到的干扰像素聚合为干扰补丁,然后分类为干扰代理。为了直接预测,构建了两个仅具有时间变量而另一个具有时空变量的RF模型,以对基于像素的干扰代理进行分类。使用时空变量进行直接预测的RF模型的整体准确性为92.4%,远高于两阶段预测的RF模型的整体准确性(90.9%)。与基于阈值的检测相比,在干扰检测中仅使用单一光谱指数的RF模型无法有效提高准确性;然而,在干扰检测中使用基于多个光谱指数的RF模型提高了干扰物最终分类的准确性。在RF模型中引入空间变量可有效提高基于像素的直接预测中的总体分类精度。但是,由于补丁中包含空间信息,因此在两阶段预测中没有必要。尽管在RF模型中观察到了空间不连续的外观,以直接对干扰源进行分类,但考虑到相对分类性能和实现的简便性,这可能是两阶段预测的替代方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号