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Self-organizing feature map neural network classification of the ASTER data based on wavelet fusion

机译:基于小波融合的ASTER数据自组织特征图神经网络分类

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Most methods for classification of remote sensing data are based on the statistical parameter evaluation with the assumption that the samples obey the normal distribution. However, more accurate classification results can be obtained with the neural network method through getting knowledge from environments and adjusting the parameter (or weight) step by step by a specific measurement. This paper focuses on the double-layer structured Kohonen self-organizing feature map (SOFM), for which all neurons within the two layers are linked one another and those of the competition layers are linked as well along the sides. Therefore, the self-adapting learning ability is improved due to the effective competition and suppression in this method. The SOFM has become a hot topic in the research area of remote sensing data classification. The Advanced Spaceborne Thermal Emission and Reflectance Radiometer (ASTER) is a new satellite-borne remote sensing instrument with three 15-m resolution bands and three 30-m resolution bands at the near infrared. The ASTER data of Dagang district, Tianjin Municipality is used as the test data in this study. At first, the wavelet fusion is carried out to make the spatial resolutions of the ASTER data identical; then, the SOFM method is applied to classifying the land cover types. The classification results are compared with those of the maximum likelihood method (MLH). As a consequence, the classification accuracy of SOFM increases about by 7% in general and, in particular, it is almost as twice as that of the MLH method in the town.
机译:大多数遥感数据分类方法都是基于统计参数评估,并假设样本服从正态分布。但是,通过从环境中获取知识并通过特定测量逐步调整参数(或权重),可以使用神经网络方法获得更准确的分类结果。本文着重研究双层结构的Kohonen自组织特征图(SOFM),对于该结构图,两层中的所有神经元都相互链接,而竞争层的神经元也沿侧面相互链接。因此,通过这种方法的有效竞争和抑制,提高了自适应学习能力。 SOFM已经成为遥感数据分类研究领域的热门话题。先进的星载热发射和反射辐射计(ASTER)是一种新型的卫星遥感仪器,在近红外具有三个15 m分辨率带和三个30 m分辨率带。本研究以天津市大港区的ASTER数据作为测试数据。首先,进行小波融合以使ASTER数据的空间分辨率相同。然后,采用SOFM方法对土地覆被类型进行分类。将分类结果与最大似然法(MLH)的分类结果进行比较。结果,SOFM的分类精度通常提高了约7%,特别是,它几乎是该镇MLH方法的两倍。

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