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Land Cover Classification Using Full-waveform LiDAR Data and Remotely Sensed Imagery

机译:利用全波形LiDAR数据和遥感影像进行土地覆盖分类

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This study integrates geometric information derived from waveforms and spectral information derived from remotely sensed imagery, in order to improve the classification accuracy of surface features. Fundamental waveform observations, such as echo amplitude and pulse width are echo features of interest. In addition, a terrain feature, slope, was of interest in land cover mapping. In order to remove noisy feature information, mean filter was applied to all the features. A Decision Tree classifier was chosen to implement a classification procedure, with the NDVI feature calculated from a Worldview-2 image. A comparison was made between those LiDAR data with and without mean filters over echo analysis. It was found that the overall accuracy of the classification was improved by 7% with the mean filter; the Kappa value was improved by 5.92%. With a NDVI feature added, it is possible to further discriminate artificial and natural ground.
机译:为了提高表面特征的分类精度,本研究对波形信息和遥感图像光谱信息进行了整合。基本波形观察,例如回波幅度和脉冲宽度,是令人关注的回波特征。另外,地形特征坡度在土地覆盖制图中很重要。为了去除嘈杂的特征信息,将均值过滤器应用于所有特征。选择了决策树分类器以实施分类程序,并从Worldview-2图像中计算出NDVI功能。通过回波分析比较了有无均值滤波器的那些LiDAR数据。结果发现,使用均值滤波器可以将分类的整体准确性提高7%; Kappa值提高了5.92%。通过添加NDVI功能,可以进一步区分人造地面和自然地面。

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