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Monitoring land-cover changes by combining a detection step with a classification step

机译:通过结合检测步骤和分类步骤来监测土地覆盖变化

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An approach merging the HotellingT2 control scheme with weighted random forest classifier is proposed and used in the context of detecting land cover changes via remote sensing and radiometric measurements. HotellingT2 procedure is introduced to identify features corresponding to changed areas. However, T2 scheme is not able to separate real from false changes. To tackle this limitation, the weighted random forest algorithm, which is an efficient classification technique for unbalanced problems, has been successfully applied on features of the detected pixels to recognize the type of change. The performance of the algorithm is evaluated using SZTAKI AirChange benchmark data, results show that the proposed detection scheme succeeds to appropriately identify changes to land cover. Also, we compared the proposed approach to that of the conventional algorithms (i.e., neural network, random forest, support vector machine and k-nearest neighbors) and found improved performance.
机译:融合HotellingT的方法 2 提出了一种带有加权随机森林分类器的控制方案,并将其用于通过遥感和辐射测量检测土地覆被变化的背景下。旅馆 2 引入过程来识别与变化区域相对应的特征。但是,T 2 方案无法将真实更改与错误更改区分开。为了解决这个限制,加权随机森林算法是一种有效的不平衡问题分类技术,已成功地应用于检测像素的特征以识别变化的类型。使用SZTAKI AirChange基准数据评估了该算法的性能,结果表明所提出的检测方案成功地正确识别了土地覆被的变化。此外,我们将提出的方法与常规算法(即神经网络,随机森林,支持向量机和k近邻)进行了比较,发现性能有所提高。

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