论文标题
CrackSeg9k:裂纹分割数据集和框架的集合和基准
CrackSeg9k: A Collection and Benchmark for Crack Segmentation Datasets and Frameworks
论文作者
论文摘要
检测裂缝是监测结构健康和确保结构安全的关键任务。裂纹检测的手动过程是耗时的,并且对检查员进行了主观。一些研究人员尝试使用传统的图像处理或基于学习的技术来解决此问题。但是,它们的工作范围仅限于检测单一类型的表面上的裂缝(墙壁,人行道,玻璃等)。用于评估这些方法的指标在文献中也有所不同,这使得比较技术具有挑战性。本文通过结合先前可用的数据集并通过解决每个数据集中的固有问题(例如噪声和扭曲)来解决这些问题。我们还提出了结合图像处理和深度学习模型的管道。最后,我们在新数据集上对这些指标的提议模型的结果进行了基准测试,并将它们与文献中的最新模型进行了比较。
The detection of cracks is a crucial task in monitoring structural health and ensuring structural safety. The manual process of crack detection is time-consuming and subjective to the inspectors. Several researchers have tried tackling this problem using traditional Image Processing or learning-based techniques. However, their scope of work is limited to detecting cracks on a single type of surface (walls, pavements, glass, etc.). The metrics used to evaluate these methods are also varied across the literature, making it challenging to compare techniques. This paper addresses these problems by combining previously available datasets and unifying the annotations by tackling the inherent problems within each dataset, such as noise and distortions. We also present a pipeline that combines Image Processing and Deep Learning models. Finally, we benchmark the results of proposed models on these metrics on our new dataset and compare them with state-of-the-art models in the literature.