Satellite road extraction method based on RFDNet neural network

IF 1 4区 数学 Q1 MATHEMATICS Electronic Research Archive Pub Date : 2023-01-01 DOI:10.3934/era.2023223
Weichi Liu, Gaifang Dong, Mingxin Zou
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Abstract

The road network system is the core foundation of a city. Extracting road information from remote sensing images has become an important research direction in the current traffic information industry. The efficient residual factorized convolutional neural network (ERFNet) is a residual convolutional neural network with good application value in the field of biological information, but it has a weak effect on urban road network extraction. To solve this problem, we developed a road network extraction method for remote sensing images by using an improved ERFNet network. First, the design of the network structure is based on an ERFNet; we added the DoubleConv module and increased the number of dilated convolution operations to build the road network extraction model. Second, in the training process, the strategy of dynamically setting the learning rate is adopted and combined with batch normalization and dropout methods to avoid overfitting and enhance the generalization ability of the model. Finally, the morphological filtering method is used to eliminate the image noise, and the ultimate extraction result of the road network is obtained. The experimental results show that the method proposed in this paper has an average F1 score of 93.37% for five test images, which is superior to the ERFNet (91.31%) and U-net (87.34%). The average value of IoU is 77.35%, which is also better than ERFNet (71.08%) and U-net (65.64%).
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基于RFDNet神经网络的卫星道路提取方法
道路网络系统是城市的核心基础。从遥感影像中提取道路信息已成为当前交通信息产业的一个重要研究方向。高效残差分解卷积神经网络(ERFNet)是一种在生物信息领域具有较好应用价值的残差卷积神经网络,但在城市路网提取方面效果较弱。为了解决这一问题,我们开发了一种基于改进的ERFNet网络的遥感影像道路网提取方法。首先,基于ERFNet进行了网络结构设计;我们增加了DoubleConv模块,并增加了展开卷积运算的次数来构建路网提取模型。其次,在训练过程中,采用动态设置学习率的策略,并结合批归一化和dropout方法,避免过拟合,增强模型的泛化能力。最后,利用形态学滤波方法消除图像噪声,得到路网的最终提取结果。实验结果表明,本文提出的方法对5幅测试图像的F1平均得分为93.37%,优于ERFNet(91.31%)和U-net(87.34%)。IoU平均值为77.35%,也优于ERFNet(71.08%)和U-net(65.64%)。
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CiteScore
1.30
自引率
12.50%
发文量
170
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