首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part E. Journal of Process Mechanical Engineering >Predictive modeling of geometric shapes of different objects using image processing and an artificial neural network
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Predictive modeling of geometric shapes of different objects using image processing and an artificial neural network

机译:使用图像处理和人工神经网络预测不同对象几何形状的建模

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摘要

In this study, an artificial neural network model was developed to predict the geometric shapes of different objects using image processing. These objects with various sizes and shapes (circle, square, triangle, and rectangle) were used for the experimental process. In order to extract the features of these geometric shapes, morphological features, including the area, perimeter, compactness, elongation, rectangularity, and roundness, were applied. For the artificial neural network modeling, the standard back-propagation algorithm was found to be the optimum choice for training the model. In the building of the network structure, five different learning algorithms were used: the Levenberg-Marquardt, the quasi-Newton back propagation, the scaled conjugate gradient, the resilient back propagation, and the conjugate gradient back propagation. The best result was obtained by 6-5-1 network architectures with single hidden layers for the geometric shapes. After artificial neural network training, the correlation coefficients (R-2) of the geometric shape values for training and testing data were very close to 1. Similarly, the root-mean-square error and mean error percentage values for the training and testing data were less than 0.9% and 0.004%, respectively. These results demonstrated that the artificial neural network is an admissible model for the estimation of geometric shapes using image processing.
机译:在该研究中,开发了一种人工神经网络模型来预测使用图像处理来预测不同对象的几何形状。这些物体具有各种尺寸和形状(圆形,方形,三角形和矩形)用于实验过程。为了提取这些几何形状的特征,施加包括区域,周长,紧凑性,伸长,矩形度和圆度的形态特征。对于人工神经网络建模,发现标准的反向传播算法是培训模型的最佳选择。在网络结构的建设中,使用了五种不同的学习算法:Levenberg-Marquardt,准牛顿回到传播,缩放的共轭梯度,弹性背部传播,以及共轭梯度背部传播。最佳结果是由6-5-1网络架构获得,具有单个隐藏图层,用于几何形状。在人工神经网络训练之后,用于训练和测试数据的几何形状值的相关系数(R-2)非常接近1.同样,培训和测试数据的根均方误差和平均误差百分比值分别小于0.9%和0.004%。这些结果表明,人工神经网络是使用图像处理估计几何形状的可允许模型。

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