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Fully automated vision-based loosened bolt detection using the Viola-Jones algorithm

机译:使用Viola-Jones算法基于视觉的全自动螺栓松动检测

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摘要

Many damage detection methods that use data obtained from contact sensors physically attached to structures have been developed. However, damage-sensitive features such as the modal properties of steel and reinforced concrete are sensitive to environmental conditions such as temperature and humidity. These uncertainties are difficult to address with a regression model or any other temperature compensation method, and these uncertainties are the primary causes of false alarms. A vision-based remote sensing system can be an option for addressing some of the challenges inherent in traditional sensing systems because it provides information about structural conditions. Using bolted connections is a common engineering practice, but very few vision-based techniques have been developed for loosened bolt detection. Thus, this article proposes a fully automated vision-based method for detecting loosened civil structural bolts using the Viola-Jones algorithm and support vector machines. Images of bolt connections for training were taken with a smartphone camera. The Viola-Jones algorithm was trained on two datasets of images with and without bolts to localize all the bolts in the images. The localized bolts were automatically cropped and binarized to calculate the bolt head dimensions and the exposed shank length. The calculated features were fed into a support vector machine to generate a decision boundary separating loosened and tight bolts. We tested our method on images taken with a digital single-lens reflex camera.
机译:已经开发出许多利用从物理上附着于结构的接触传感器获得的数据的损伤检测方法。但是,对损伤敏感的特征(例如钢和钢筋混凝土的模态特性)对环境条件(例如温度和湿度)敏感。这些不确定性很难通过回归模型或任何其他温度补偿方法来解决,并且这些不确定性是错误警报的主要原因。基于视觉的遥感系统可以解决传统传感系统固有的一些挑战,因为它可以提供有关结构条件的信息。使用螺栓连接是一种常见的工程实践,但是很少有基于视觉的技术可用于松动的螺栓检测。因此,本文提出了一种使用Viola-Jones算法和支持向量机的基于视觉的全自动方法,用于检测松动的土木结构螺栓。使用智能手机相机拍摄了用于训练的螺栓连接的图像。在带有和不带有螺栓的两个图像数据集中训练了Viola-Jones算法,以定位图像中的所有螺栓。本地化的螺栓会自动裁剪和二值化,以计算螺栓头尺寸和裸露的柄长。将计算出的特征输入到支持向量机中,以生成将松动螺栓和紧固螺栓分开的决策边界。我们在用数码单镜头反光照相机拍摄的图像上测试了我们的方法。

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