论文标题
使用计算机视觉和深度学习的自动关节损伤量化
Automatic joint damage quantification using computer vision and deep learning
论文作者
论文摘要
关节破裂或剥落的损害(此后称为关节损害)会影响混凝土人行道的安全性和长期性能。随着时间的推移,评估和量化联合损害,以帮助建立维护,预测维护成本并最大化混凝土路面服务寿命,这一点很重要。提出了使用具有深度学习(DL)算法的计算机视觉技术对关节损伤进行准确,自主和快速量化的框架。 DL模型用于训练263张具有关节损坏的锯切图像。训练有素的DL模型用于一系列查询2D图像中的Pixel颜色掩盖关节损伤,该图像用于使用运动算法使用开源算法结构重建3D图像。使用颜色阈值的另一种损坏定量算法来检测和计算3D重建图像中损伤的表面积。通过检查美国伊利诺伊州的四个横向收缩关节的关节损伤,包括三个可接受的关节和一个不可接受的关节,可以通过视觉检查来验证该框架的有效性。结果表明该框架达到了76%的召回和10%的误差。
Joint raveled or spalled damage (henceforth called joint damage) can affect the safety and long-term performance of concrete pavements. It is important to assess and quantify the joint damage over time to assist in building action plans for maintenance, predicting maintenance costs, and maximize the concrete pavement service life. A framework for the accurate, autonomous, and rapid quantification of joint damage with a low-cost camera is proposed using a computer vision technique with a deep learning (DL) algorithm. The DL model is employed to train 263 images of sawcuts with joint damage. The trained DL model is used for pixel-wise color-masking joint damage in a series of query 2D images, which are used to reconstruct a 3D image using open-source structure from motion algorithm. Another damage quantification algorithm using a color threshold is applied to detect and compute the surface area of the damage in the 3D reconstructed image. The effectiveness of the framework was validated through inspecting joint damage at four transverse contraction joints in Illinois, USA, including three acceptable joints and one unacceptable joint by visual inspection. The results show the framework achieves 76% recall and 10% error.