论文标题
深卷积神经网络的合奏,用于自动路面裂纹检测和测量
Ensemble of Deep Convolutional Neural Networks for Automatic Pavement Crack Detection and Measurement
论文作者
论文摘要
自动路面裂纹检测和测量是重要的道路问题。机构必须保证改善道路安全。常规的裂纹检测和测量算法可能非常耗时且效率低。因此,最近,创新算法受到了研究人员的关注。在本文中,我们提出了一个基于自动路面裂纹检测和测量的概率融合的卷积神经网络(无池层)的集合。具体而言,采用了卷积神经网络的合奏来确定带有原图像的小裂纹结构。其次,将集合的单个卷积神经网络模型的输出进行平均,以产生每个像素的最终裂纹概率值,该概率可以获得预测的概率图。最后,通过使用骨架提取算法测量裂纹的预测形态特征。为了验证提出的方法,对两个公共裂纹数据库(CFD和AIGLERN)进行了一些实验,并比较了不同最新方法的结果。实验结果表明,所提出的方法的表现优于其他方法。对于裂纹测量,可以根据不同的裂纹类型(复杂,常见,薄和相交的裂纹)来测量裂纹长度和宽度。结果表明,所提出的算法可以有效地用于裂纹测量。
Automated pavement crack detection and measurement are important road issues. Agencies have to guarantee the improvement of road safety. Conventional crack detection and measurement algorithms can be extremely time-consuming and low efficiency. Therefore, recently, innovative algorithms have received increased attention from researchers. In this paper, we propose an ensemble of convolutional neural networks (without a pooling layer) based on probability fusion for automated pavement crack detection and measurement. Specifically, an ensemble of convolutional neural networks was employed to identify the structure of small cracks with raw images. Secondly, outputs of the individual convolutional neural network model for the ensemble were averaged to produce the final crack probability value of each pixel, which can obtain a predicted probability map. Finally, the predicted morphological features of the cracks were measured by using the skeleton extraction algorithm. To validate the proposed method, some experiments were performed on two public crack databases (CFD and AigleRN) and the results of the different state-of-the-art methods were compared. The experimental results show that the proposed method outperforms the other methods. For crack measurement, the crack length and width can be measure based on different crack types (complex, common, thin, and intersecting cracks.). The results show that the proposed algorithm can be effectively applied for crack measurement.