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Research on Segmentation Features in Visual Detection of Rust on Bridge Pier

机译:桥墩锈蚀视觉检测中的分割特征研究

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The detection of bridge rust is an essential work in the daily maintenance of bridges. For the detection and recognition of rust in bridge pier images, firstly, image segmentation and erosion expansion are preprocessed. Then, the area of rust is counted and the rust grade is determined according to the standard. The quality of bridge image is easily affected by environmental factors, which leads to the increase of segmentation error. The selection of segmentation features is the key to improve the segmentation effect. Gray value, R, G, B single color feature and the combination of hue and saturation are selected as segmentation features respectively to detect and recognize the rust of bridge piers. The experimental results of 35 pier images show that when the combination of hue and saturation is used as segmentation feature, the rust disease can be effectively detected and identified, and the accuracy rate is more than 94%.
机译:桥梁锈蚀的检测是桥梁日常维护中必不可少的工作。为了检测和识别桥墩图像中的锈蚀,首先对图像分割和侵蚀扩展进行预处理。然后,计算锈蚀面积并根据标准确定锈蚀等级。桥梁图像的质量容易受到环境因素的影响,从而导致分割误差的增加。分割特征的选择是提高分割效果的关键。选择灰度值,R,G,B单色特征以及色相和饱和度的组合作为分割特征,以检测和识别桥墩的锈蚀。 35张墩图像的实验结果表明,当采用色相和饱和度的组合作为分割特征时,可以有效地检测和识别出锈病,准确率达到94%以上。

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