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MULTI-SPECTRAL SATELLITE IMAGE CLASSIFICATION USING AN EVOLVING NEURAL NETWORK APPROACH

机译:使用不断发展的神经网络方法进行多光谱卫星图像分类

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This paper investigates a new evolving neural network classifier based on real coded genetic algorithm for automatic multi-spectral satellite image classification (land cover mapping problem). The evolving neural network classifier is designed using hybrid genetic operators with classification accuracy as a measure of performance. The evolving neural network methodology is implemented in Pentium clusters. The proposed methodology searches for the best neural network architecture and its connection weights for a given set of training patterns. The performance of the proposed evolving neural network based classifier is evaluated for Level-Ⅱclassifier model using the Landsat 7 Thematic Mapper high resolution imagery. After evolving the neural network at pixel level, the system performance is tested with sites not seen during training. Results are compared with maximum likelihood classifier, gradient based fully connected multilayer perceptron and growing and pruning radial basis function classifier. The proposed classifier is more accurate, robust with respect to the noise in the input spectrum and also overcomes the common limitations of the standard neural based classifier models.
机译:本文研究了一种基于实编码遗传算法的新型进化神经网络分类器,用于自动多光谱卫星图像分类(土地覆盖制图问题)。进化的神经网络分类器是使用混合遗传算子设计的,分类精度可作为一种性能指标。不断发展的神经网络方法是在奔腾集群中实现的。所提出的方法针对给定的一组训练模式搜索最佳的神经网络架构及其连接权重。使用Landsat 7 Thematic Mapper高分辨率图像对Level-Ⅱ分类器模型评估了所提出的基于进化神经网络的分类器的性能。在像素级发展了神经网络后,系统的性能将在训练过程中看不到的位置进行测试。将结果与最大似然分类器,基于梯度的完全连接的多层感知器以及生长和修剪的径向基函数分类器进行比较。所提出的分类器相对于输入频谱中的噪声更准确,更健壮,并且还克服了基于标准神经的分类器模型的常见局限性。

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