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Convolutional Neural Network for Road Extraction

机译:卷积神经网络的道路提取

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In this paper, the convolution neural network with large block input and small block output was used to extract road. To reflect the complex road characteristics in the study area, a deep convolution neural network VGG19 was conducted for road extraction. Based on the analysis of the characteristics of different sizes of input block, output block and the extraction effect, the votes of deep convolutional neural networks was used as the final road prediction. The study image was from GF-2 panchromatic and multi-spectral fusion in Yinchuan. The precision of road extraction was 91%. The experiments showed that model averaging can improve the accuracy to some extent. At the same time, this paper gave some advice about the choice of input block size and output block size.
机译:本文采用大块输入和小块输出的卷积神经网络提取道路。为了反映研究区域的复杂道路特征,进行了深度卷积神经网络VGG19的道路提取。在分析了不同大小的输入块,输出块的特征和提取效果的基础上,将深度卷积神经网络的投票结果用作最终的道路预测。研究图像来自银川地区的GF-2全色和多光谱融合。道路提取的精度为91%。实验表明,模型平均可以在一定程度上提高精度。同时,本文对输入块大小和输出块大小的选择提供了一些建议。

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