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Research on remote sensing identification of rural abandoned homesteads using multi-parameter characteristics method

机译:基于多参数特征方法的农村废弃宅基地遥感识别研究

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Hollow village is a special phenomenon in the process of urbanization in China, which causes the waste of land resources. Therefore, it's imminent to carry out the hollow village recognition and renovation. However, there are few researches on the remote sensing identification of hollow village. In this context, in order to recognize the abandoned homesteads by remote sensing technique, the experiment was carried out as follows. Firstly, Gram-Schmidt transform method was utilized to complete the image fusion between multi-spectral images and panchromatic image of WorldView-2. Then the fusion images were made edge enhanced by high pass filtering. The multi-resolution segmentation and spectral difference segmentation were carried out to obtain the image objects. Secondly, spectral characteristic parameters were calculated, such as the normalized difference vegetation index (NDVI), the normalized difference water index (NDWI), the normalized difference Soil index (NDSI) etc.. The shape feature parameters were extracted, such as Area, Length/Width Ratio and Rectangular Fit etc.. Thirdly, the SEaTH algorithm was used to determine the thresholds and optimize the feature space. Furthermore, the threshold classification method and the random forest classifier were combined, and the appropriate amount of samples were selected to train the classifier in order to determine the important feature parameters and the best classifier parameters involved in classification. Finally, the classification results was verified by computing the confusion matrix. The classification results were continuous and the phenomenon of salt and pepper using pixel classification was avoided effectively. In addition, The results showed that the extracted Abandoned Homesteads were in complete shapes, which could be distinguished from those confusing classes such as Homestead in Use and Roads.
机译:空心村是中国城市化进程中的一种特殊现象,造成土地资源的浪费。因此,迫切需要进行空心村落的识别和整治。但是,关于空心村落遥感识别的研究很少。在这种情况下,为了通过遥感技术识别被遗弃的宅基地,进行了如下实验。首先,利用Gram-Schmidt变换方法完成WorldView-2的多光谱图像与全色图像之间的图像融合。然后通过高通滤波使融合图像边缘增强。进行了多分辨率分割和光谱差异分割,得到了图像对象。其次,计算光谱特征参数,例如归一化植被指数(NDVI),归一化差异水指数(NDWI),归一化差异土壤指数(NDSI)等。提取形状特征参数,例如Area,长宽比和矩形拟合等。第三,使用SEaTH算法确定阈值并优化特征空间。此外,结合了阈值分类方法和随机森林分类器,并选择了适当数量的样本来训练分类器,以确定参与分类的重要特征参数和最佳分类器参数。最后,通过计算混淆矩阵来验证分类结果。分类结果是连续的,并且有效避免了使用像素分类的盐和胡椒现象。此外,结果表明,提取的“废弃的宅基地”形状完整,可以与“使用中的宅基地”和“道路”等令人困惑的类区分开。

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