Crack detection plays a key role in automated pavement inspection. Although a large number of algorithms have been developed in recent years to further boost performance, there are still remaining challenges in practice, due to the complexity of pavement images. To further accelerate the development and identify the remaining challenges, this paper conducts a comparison study to evaluate the performance of the state of the art crack detection algorithms quantitatively and objectively. A more comprehensive annotated pavement crack dataset (NHA12D) that contains images with different viewpoints and pavements types is proposed. In the comparison study, crack detection algorithms were trained equally on the largest public crack dataset collected and evaluated on the proposed dataset (NHA12D). Overall, the U-Net model with VGG-16 as backbone has the best all-around performance, but models generally fail to distinguish cracks from concrete joints, leading to a high false-positive rate. It also found that detecting cracks from concrete pavement images still has huge room for improvement. Dataset for concrete pavement images is also missing in the literature. Future directions in this area include filling the gap for concrete pavement images and using domain adaptation techniques to enhance the detection results on unseen datasets.
翻译:虽然近年来为进一步提高性能制定了大量算法,但由于人行道图像的复杂性,在实践中仍然存在挑战。为了进一步加快发展并查明余下的挑战,本文件进行了一项比较研究,以从数量上和客观上评价先进裂缝检测算法的性能。提出了一套更全面的附加说明的人行道裂缝数据集(NHA12D),其中载有不同观点和人行道类型的图像。在比较研究中,对裂缝检测算法进行了平等培训,以了解在拟议数据集(NHA12D)上收集和评估的最大公共裂缝数据集。总体而言,以VGG-16为主的U-Net模型具有最佳的全方位性能,但模型通常无法将裂缝与具体连接的裂缝区分开,导致高的假阳率。它还发现,从混凝土铺路图像中探测裂缝隙仍有很大的改进空间。具体铺路图像的数据集在文献中也缺失。该领域的未来方向包括填补混凝土铺路图像的空白,并使用区域适应技术来改进关于测结果。