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Evolving neural network using real coded genetic algorithm (GA) for multispectral image classification

机译:使用实编码遗传算法(GA)的进化神经网络用于多光谱图像分类

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This paper investigates the effectiveness of the genetic algorithm (GA) evolved neural network classifier and its application to the land cover classification of remotely sensed multispectral imagery. First, the key issues of the algorithm and the general procedures are described in detail. Our methodology adopts a real coded GA strategy and hybrid with a back propagation (BP) algorithm. The genetic operators are carefully designed to optimize the neural network, avoiding premature convergence and permutation problems. Second, a SPOT-4 XS imagery is employed to evaluate its accuracy. Traditional classification algorithms, such as maximum likelihood classifier, back propagation neural network classifier, are also involved for a comparison purpose. Based on an evaluation of the user's accuracy and kappa statistic of different classifiers, the superiority of applying the discussed genetic algorithm-based classifier for simple land cover classification using multispectral imagery data is established. Thirdly, a more complicate experiment on CBERS (China-Brazil Earth Resources Satellite) data and discussion also demonstrates that carefully designed genetic algorithm-based neural network outperforms than gradient descent-based neural network. This has been supported by the analysis of the changes of connection weights and biases of the neural network. Finally, some concluding remarks and suggestions are also presented. (C) 2003 Elsevier B.V. All rights reserved.
机译:本文研究了遗传算法进化神经网络分类器的有效性及其在遥感多光谱图像土地覆盖分类中的应用。首先,详细描述算法的关键问题和一般过程。我们的方法采用实际编码的GA策略,并与反向传播(BP)算法混合。精心设计了遗传算子以优化神经网络,避免了过早的收敛和排列问题。其次,采用SPOT-4 XS图像评估其准确性。为了进行比较,还涉及传统的分类算法,例如最大似然分类器,反向传播神经网络分类器。基于对不同分类器的用户准确性和kappa统计量的评估,建立了将所讨论的基于遗传算法的分类器应用于使用多光谱图像数据进行简单土地覆盖分类的优势。第三,对CBERS(中国-巴西地球资源卫星)数据进行的更复杂的实验和讨论还表明,与基于梯度下降的神经网络相比,精心设计的基于遗传算法的神经网络的性能优于。对连接权重和神经网络偏差的分析已经支持了这一点。最后,提出了一些总结性意见和建议。 (C)2003 Elsevier B.V.保留所有权利。

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