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A study of computer vision for ground surface roughness evaluation

机译:用于地面粗糙度评估的计算机视觉研究

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In the evaluation of surface roughness by computer vision technique, the pattern of illumination is generally correlated with optical surface finish parameters from the images. So this paper carried out experiments to investigate the effects of various factors and completed the optimum design of capture condition. Then we captured abundant sample images under appropriate experimental condition and chose to extract features of surface roughness in the spatial frequency domain which should be less sensitive to noise than spatial domain features. Therefore, artificial neural network (ANN), which took frequency-domain roughness features as the input, was developed to determine surface roughness by selecting the back-propagation algorithm. The built ANNs using these critical sets of inputs showed low deviation from the training data, low deviation from the testing data and high sensibility to the inputs levels. And the high prediction accuracy of the developed ANNs was confirmed by the good agreement with the results from traditional stylus method. Hence the proposed roughness features and neural network were efficient and effective for automated assessment of surface roughness.
机译:在通过计算机视觉技术评估表面粗糙度时,照明的模式通常与图像中的光学表面光洁度参数相关。因此,本文进行了实验研究各种因素的影响,并完成了捕获条件的优化设计。然后,我们在适当的实验条件下捕获了大量样本图像,并选择在空间频域中提取表面粗糙度的特征,该特征应比空间域特征对噪声更不敏感。因此,开发了以频域粗糙度特征为输入的人工神经网络(ANN),通过选择反向传播算法来确定表面粗糙度。使用这些关键输入集构建的人工神经网络显示出与训练数据的低偏差,与测试数据的低偏差以及对输入水平的高敏感性。与传统测针方法的结果吻合良好,证实了所开发的人工神经网络具有较高的预测精度。因此,提出的粗糙度特征和神经网络对于表面粗糙度的自动评估是有效的。

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