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Multi-scale object-based image analysis and feature selection of multi-sensor earth observation imagery using random forests

机译:基于随机森林的多尺度基于对象的图像分析和多传感器地球观测图像的特征选择

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The random forest (RF) classifier is a relatively new machine learning algorithm that can handle data sets with large numbers and types of variables. Multi-scale object-based image analysis (MOBIA) can generate dozens, and sometimes hundreds, of variables used to classify earth observation (EO) imagery. In this study, a MOBIA approach is used to classify the land cover in an area undergoing intensive agricultural development. The information derived from the elevation data and imagery from two EO satellites are classified using the RF algorithm. Using a wrapper feature selection algorithm based on the RF, a large initial data set consisting of 418 variables was reduced by 60%, with relatively little loss in the overall classification accuracy. With this feature-reduced data set, the RF classifier produced a useable depiction of the land cover in the selected study area and achieved an overall classification accuracy of greater than 90%. Variable importance measures produced by the RF algorithm provided an insight into which object features were relatively more important for classifying the individual land-cover types. The MOBIA approach outlined in this study achieved the following: (i) consistently high overall classification accuracies (85%) using the RF algorithm in all models examined, both before and after feature reduction; (ii) feature selection of a large data set with little expense to the overall classification accuracy; and (iii) increased interpretability of classification models due to the feature selection process and the use of variable importance scores generated by the RF algorithm.View full textDownload full textRelated var addthis_config = { ui_cobrand: "Taylor & Francis Online", services_compact: "citeulike,netvibes,twitter,technorati,delicious,linkedin,facebook,stumbleupon,digg,google,more", pubid: "ra-4dff56cd6bb1830b" }; Add to shortlist Link Permalink http://dx.doi.org/10.1080/01431161.2011.649864
机译:随机森林(RF)分类器是一种相对较新的机器学习算法,可以处理具有大量变量类型的数据集。基于对象的多尺度图像分析(MOBIA)可以生成数十个(有时甚至数百个)变量,用于对地球观测(EO)图像进行分类。在这项研究中,采用MOBIA方法对农业集约化发展地区的土地覆盖进行分类。使用RF算法对来自海拔数据和来自两个EO卫星的图像的信息进行分类。使用基于RF的包装器特征选择算法,由418个变量组成的大型初始数据集减少了60%,而总体分类精度损失相对较小。利用减少了功能的数据集,RF分类器可以对所选研究区域中的土地覆盖物进行有用的描述,并实现90%以上的总体分类精度。 RF算法产生的可变重要性度量提供了一种洞见,即哪些对象特征对于分类各个土地覆被类型而言相对更为重要。本研究中概述的MOBIA方法实现了以下目标:(i)在特征缩减之前和之后,在所有检查的模型中使用RF算法始终保持较高的总体分类精度(> 85%); (ii)对大型数据集进行特征选择,而对整体分类的准确性几乎没有花费; (iii)由于特征选择过程和使用RF算法生成的可变重要性评分而提高了分类模型的可解释性。查看全文下载全文相关的var addthis_config = {ui_cobrand:“泰勒和弗朗西斯在线”,service_compact:“ citeulike ,netvibes,twitter,technorati,可口,linkedin,facebook,stumbleupon,digg,google,更多”,发布:“ ra-4dff56cd6bb1830b”};添加到候选列表链接永久链接http://dx.doi.org/10.1080/01431161.2011.649864

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