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Land cover change detection based on multi-temporal Spot5 imagery

机译:基于多时相Spot5影像的土地覆盖变化检测

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In this paper, we propose a land cover change detection method especially for the change between farmland and non-farmland usage, which is of vital importance in urban monitoring application. Our approach is based on the difference of NDVI (Normalized Difference Vegetation Index) and texture characteristic between farmland and non-farmland in SPOT-5 imagery, Spot5 imagery is used because it has high spatial resolution and shorter recursive period. First, NDVI is used for a rough detection of land cover change. Since NDVI is an important parameter to describe land cover, NDVI difference between two different temporal images can be calculated through image operation to obtain change information. After that, unsupervised texture segmentation of the image of NDVI difference is performed to find a detailed land cover change. During the process, Gabor filter is used for the description of texture features and k-means clustering algorithm is proposed to cluster those pixels. Finally, areas which have different textures are land cover change regions. A suburb area in Beijing is selected to verify our approach; two spot5 images in different time are used. And the experiment result shows that the change detection accuracy related to non-farmland usage is more than 80% comparing to result interpreted by expert. The creative parts of our approach lie in a three-step detection scheme, and NDVI is proved to be an efficient and effective way to differentiate the change area. Although our approach is successful in our case, it is not suited for remote sensing images captured in winter as the NDVI and texture difference in this case is minors.
机译:在本文中,我们提出了一种土地覆盖变化检测方法,特别是针对耕地和非耕地使用之间的变化,这在城市监测应用中至关重要。我们的方法基于SPOT-5影像中NDVI(归一化植被指数)的差异和农田与非农田之间的纹理特征,因此使用Spot5影像是因为它具有较高的空间分辨率和较短的递归周期。首先,NDVI用于粗略检测土地覆被变化。由于NDVI是描述土地覆盖的重要参数,因此可以通过图像运算来计算两个不同时间图像之间的NDVI差异,以获得变化信息。之后,对NDVI差异图像进行无监督的纹理分割,以找到详细的土地覆被变化。在此过程中,使用Gabor滤波器描述纹理特征,并提出了k均值聚类算法对那些像素进行聚类。最后,具有不同纹理的区域是土地覆被变化区域。选择了北京的一个郊区来验证我们的方法;使用了两个不同时间的spot5图像。实验结果表明,与专家解释的结果相比,与非耕地使用有关的变化检测准确率达到80%以上。我们方法的创新之处在于三步检测方案,而NDVI被证明是区分变化区域的有效途径。尽管我们的方法在我们的案例中是成功的,但由于NDVI和纹理差异较小,因此不适用于冬季捕获的遥感图像。

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