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An object-based classification approach for high-spatial resolution imagery

机译:基于对象的高空间分辨率图像分类方法

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With the recent availability of commercial high resolution remote sensing multispectral imagery from sensors such as IKONOS and QuickBird, we can't get the accuracy of land-cover classification expected using pixel-based approach. In this paper, we bring about object-based approach combined with the nearest neighbor to classify the QuickBird image of LianYungang city. Firstly, the image is segmented into object feature, we make the shape feature and contextual relation feature join the new feature space which is used to classify. And then we compare the classification of object-based approach accuracy with the nearest neighbor method of classification result, we can draw a conclusion that the method of classification in this paper can recognize geo-types much better. And the overall accuracy is 92.19%; the coefficient of Kappa is 0.8835. Salt and pepper effect is decreased effectively. The result indicates that the approach of land-cover classification combined object features with the nearest neighbor approach supplies another new technique for interpreting high resolution remote sensed imagery.
机译:随着ICKONOS和QuickBird等传感器的商业高分辨率遥感多光谱图像的最近,我们无法使用基于像素的方法预期的土地覆盖分类的准确性。在本文中,我们带来了基于对象的方法与最近的邻居相结合,分类连云港市的Quickbird图像。首先,将图像分段为对象特征,我们使形状特征和上下文关系功能加入用于对的新功能空间。然后,我们将基于对象的方法精度的分类与最近的邻邻的分类结果进行比较,我们可以得出结论,本文中的分类方法可以识别出Geo-type更好。整体准确性为92.19%; Kappa系数为0.8835。盐和胡椒效应有效减少。结果表明,陆地覆盖分类组合对象特征具有最近邻近的方法提供了另一种用于解释高分辨率遥感图像的新技术。

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