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Evolving neural network using variable string genetic algorithm for color infrared aerial image classification

机译:演化神经网络的可变字符串遗传算法用于彩色红外航拍图像分类

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摘要

Coastal wetlands are characterized by complex patterns both in their geomorphic and ecological features. Besides field observations, it is necessary to analyze the land cover of wetlands through the color infrared (CIR) aerial photography or remote sensing image. In this paper, we designed an evolving neural network classifier using variable string genetic algorithm (VGA) for the land cover classification of CIR aerial image. With the VGA, the classifier that we designed is able to evolve automatically the appropriate number of hidden nodes for modeling the neural network topology optimally and to find a near-optimal set of connection weights globally. Then, with backpropagation algorithm (BP), it can find the best connection weights. The VGA-BP classifier, which is derived from hybrid algorithms mentioned above, is demonstrated on CIR images classification effectively. Compared with standard classifiers, such as Bayes maximum-likelihood classifier, VGA classifier and BP-MLP (multi-layer perception) classifier, it has shown that the VGA-BP classifier can have better performance on highly resolution land cover classification.
机译:沿海湿地的地貌和生态特征复杂。除实地观察外,还需要通过彩色红外(CIR)航空摄影或遥感图像分析湿地的土地覆盖。在本文中,我们设计了一种基于可变字符串遗传算法(VGA)的进化神经网络分类器,用于CIR航空影像的土地覆盖分类。使用VGA,我们设计的分类器能够自动演化出适当数量的隐藏节点,以对神经网络拓扑进行最佳建模,并在全局范围内找到接近最优的一组连接权。然后,使用反向传播算法(BP),可以找到最佳的连接权重。从上述混合算法派生的VGA-BP分类器可以有效地在CIR图像分类中得到证明。与贝叶斯最大似然分类器,VGA分类器和BP-MLP(多层感知)分类器等标准分类器相比,VGA-BP分类器在高分辨率土地覆被分类上具有更好的性能。

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