首页> 外文期刊>International journal of remote sensing >Radial basis function neural networks classification using very high spatial resolution satellite imagery: an application to the habitat area of Lake Kerkini (Greece)
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Radial basis function neural networks classification using very high spatial resolution satellite imagery: an application to the habitat area of Lake Kerkini (Greece)

机译:径向基函数神经网络的超高分辨率卫星图像分类:在Kerkini湖(希腊)的栖息地中的应用

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This study investigates the potential of applying the radial basis function (RBF) neural network architecture for the classification of multispectral very high spatial resolution satellite images into 13 classes of various scales. For the development of the RBF classifiers, the innovative fuzzy means training algorithm is utilized, which is based on a fuzzy partition of the input space. The method requires only a short amount of time to select both the structure and the parameters of the RBF classifier. The new technique was applied to the area of Lake Kerkini, which is a wetland of great ecological value, located in northern Greece. Eleven experiments were carried out in total in order to investigate the performance of the classifier using different input parameters (spectral and textural) as well as different window sizes and neural network complexities. For comparison purposes the same satellite scene was classified using the maximum likelihood (MLH) classification with the same set of training samples. Overall, the neural network classifiers outperformed the MLH classification by 10-17%, reaching a maximum overall accuracy of 78%. Analysis showed that the selection of input parameters is vital for the success of the classifiers. On the other hand, the incorporation of textural analysis and/or modification of the window size do not affect the performance substantially.
机译:这项研究调查了应用径向基函数(RBF)神经网络体系结构将多光谱超高分辨率空间卫星图像分类为13种不同规模的潜力。为了开发RBF分类器,使用了创新的模糊均值训练算法,该算法基于输入空间的模糊划分。该方法只需要很短的时间即可选择RBF分类器的结构和参数。这项新技术被应用到位于希腊北部的具有重要生态价值的湿地克尔基尼湖地区。为了研究使用不同输入参数(光谱和纹理)以及不同窗口大小和神经网络复杂度的分类器的性能,总共进行了11个实验。为了进行比较,使用最大似然(MLH)分类对相同的卫星场景进行了分类,并使用了相同的训练样本集。总体而言,神经网络分类器的性能优于MLH分类器的10-17%,最高整体准确性为78%。分析表明,输入参数的选择对于分类器的成功至关重要。另一方面,结合纹理分析和/或修改窗口大小不会显着影响性能。

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