基于像元与面向对象的TM数据土地利用/覆被分类方法比较研究

Cui Lin-li, Shi Jun, Tang Ping, Huaqiang Du
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引用次数: 12

摘要

土地利用/覆被变化是近年来全球气候变化的重要内容之一。遥感技术为广泛的土地利用/覆被变化研究提供了有力的支持。由于同一地物具有不同光谱特征和不同地物具有相同光谱特征的情况普遍存在,传统的基于像元的分类精度还不能满足土地利用/覆被变化监测的需要。这种新的面向对象方法为遥感分类开辟了新的途径。该方法最大的贡献是使遥感特征的抽象理论更加完善。原本难以提取形状、位置和空间之间的关系,而面向对象的方法使得在遥感数据具有较高空间分辨率的情况下提取形状、位置和空间之间的关系成为可能。本文对基于光谱、纹理和形状特征的TM数据进行了这两种方法的分类,并与人工专家视觉解译的分类精度进行了比较分析。结果表明:(1)TM数据也适合面向对象的分类方法。(2)面向对象方法的准确率高于基于像素的方法,分类结果的椒盐噪声更少,省去了琐碎的分类过去处理。(3)在较小的计算窗口下,两种方法得到的最优纹理特征组非常相似。(4) TM数据源的形状特征分类效果不突出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison study on the pixel-based and object-oriented methods of land-use/cover classification with TM data
In recent years the land-use/cover change is one of the important points of the global climate change. The remote sensing techniques provide strong support to the study on the wide land-use/cover change. Because of the common existing of same object having different spectral character and different object having same spectral character, the classification accuracy of traditional pixel-based has not yet satisfied the need of the monitor of the land-use/cover change. The newly object-oriented method opens a new path for the remote sensing classification. The biggest contribution is that the new method makes the theory of the abstraction of the remote sensing characteristics be perfect. Originally, it is difficult to extract the relationship of shape, location and space, now the object-oriented method makes it be possible in the condition with remote sensing data of higher spatial resolution. In this paper, these two methods ware carried out for TM data based on spectral, texture, and shape features, and the classification accuracy was compared and analyzed with that of man-expert visual interpretation. The results show that (1) TM data are also fit to the method of object-oriented classification. (2) The accuracy of object-oriented method is higher than that of pixel-based method, and the classification result has less pepper-and-salt noise, omitting trivial classification past-processing. (3) The optimal texture features group by the two methods is very similar in the smaller calculation window. (4) The classification effects with shape feature in TM data source are not outstanding.
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