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A Chebyshev polynomial radial basis function neural network for automated shoreline extraction from coastal imagery

机译:Chebyshev多项式径向基函数神经网络用于从海岸图像中自动提取海岸线

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This paper investigates the potential of using a polynomial radial basis function (RBF) neural network to extract the shoreline position from coastal video images. The basic structure of the proposed network encompasses a standard RBF network module, a module of nodes that use Chebyshev polynomials as activation functions, and an inference module. The experimental setup is an operational coastal video monitoring system deployed in two sites in Southern Europe to generate variance coastal images. The histogram of each image is approximated by non-linear regression, and associated with a manually extracted intensity threshold value that quantifies the shoreline position. The key idea is to use the set of the resulting regression parameters as input data, and the intensity threshold values as output data of the network. In summary, the data set is extracted by quantifying the qualitative image information, and the proposed network takes the advantage of the powerful approximation capabilities of the Chebyshev polynomials by utilizing a small number of coefficients. For comparative reasons, we apply a polynomial RBF network trained by fuzzy clustering, and a feed-forward neural network trained by the back propagation algorithm. The comparison criteria used are the standard mean square error; the data return rates, and the root mean square error of the cross-shore shoreline position, calculated against the shorelines extracted by the aforementioned annotated threshold values. The main conclusions of the simulation study are: (a) the proposed method outperforms the other networks, especially in extracting the shoreline from images used as testing data; (b) for higher polynomial orders it obtains data return rates greater than 84%, and the root mean square error of the cross-shore shoreline position is less than 1.8 meters.
机译:本文研究了使用多项式径向基函数(RBF)神经网络从沿海视频图像中提取海岸线位置的潜力。拟议网络的基本结构包括一个标准RBF网络模块,一个使用Chebyshev多项式作为激活函数的节点模块以及一个推理模块。实验装置是一个可操作的沿海视频监控系统,部署在南欧的两个站点中,以生成变化的沿海图像。每个图像的直方图通过非线性回归近似,并与手动提取的强度阈值相关联,该阈值可量化海岸线位置。关键思想是将结果回归参数集用作输入数据,并将强度阈值用作网络的输出数据。总之,通过量化定性图像信息来提取数据集,并且所提出的网络通过利用少量系数利用了切比雪夫多项式的强大逼近能力。出于比较的原因,我们应用了由模糊聚类训练的多项式RBF网络和由反向传播算法训练的前馈神经网络。使用的比较标准是标准均方误差;根据上述带注释的阈值提取的海岸线计算出的数据返回率以及跨岸海岸线位置的均方根误差。仿真研究的主要结论是:(a)所提出的方法优于其他网络,特别是在从用作测试数据的图像中提取海岸线时; (b)对于较高的多项式阶数,它获得的数据返回率大于84%,并且跨岸海岸线位置的均方根误差小于1.8米。

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