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The Research on Image Classification of Remote Sensing Based on an Improved Neural Network

机译:基于改进神经网络的遥感图像分类研究

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With higher spatial resolution, the image classification of remote sensing is always a hot research field. Besides spectral information, texture information from remote sensing image of higher spatial resolution has become an important data source to improve the classification accuracy. The image classification approach adopts an improved neural network, which contains two steps connected by the refusal principle. Two steps of input neurons are spectral information, using 3 ?? 3 window size, and texture information from gray co-occurrence matrix, which is selected by the genetic algorithms. The final result which is to overlay of above results get higher accuracy that the traditional method that ANN combine simply all of information from different source as input neurons.
机译:具有较高的空间分辨率,遥感的图像分类始终是一个热门研究领域。除光谱信息外,来自较高空间分辨率的遥感图像的纹理信息已成为提高分类准确性的重要数据源。图像分类方法采用改进的神经网络,其中包含由拒绝原理连接的两个步骤。输入神经元的两个步骤是光谱信息,使用3 ?? 3窗口大小和来自灰色共同发生矩阵的纹理信息,由遗传算法选择。覆盖上述结果的最终结果获得了更高的准确性,即ANN将所有来自不同来源的信息作为输入神经元的所有信息。

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