Department of Mechanical Engineering, Politecnico di Milano, Via La Masa 1, 20156 Milan, Italy.
Department of Industrial Engineering and Mathematical Science, Università Politecnica delle Marche, Via Brecce Bianche 12, 60131 Ancona, Italy.
Sensors (Basel). 2023 Apr 16;23(8):4023. doi: 10.3390/s23084023.
Accurately assessing the geometric features of curvilinear structures on images is of paramount importance in many vision-based measurement systems targeting technological fields such as quality control, defect analysis, biomedical, aerial, and satellite imaging. This paper aims at laying the basis for the development of fully automated vision-based measurement systems targeting the measurement of elements that can be treated as curvilinear structures in the resulting image, such as cracks in concrete elements. In particular, the goal is to overcome the limitation of exploiting the well-known Steger's ridge detection algorithm in these applications because of the manual identification of the input parameters characterizing the algorithm, which are preventing its extensive use in the measurement field. This paper proposes an approach to make the selection phase of these input parameters fully automated. The metrological performance of the proposed approach is discussed. The method is demonstrated on both synthesized and experimental data.
准确评估图像中曲线结构的几何特征在许多基于视觉的测量系统中至关重要,这些系统针对的技术领域包括质量控制、缺陷分析、生物医学、航空和卫星成像。本文旨在为开发针对可以视为图像中曲线结构的元素进行测量的全自动基于视觉的测量系统奠定基础,例如混凝土元素中的裂缝。特别是,目标是克服在这些应用中利用著名的 Steger 脊检测算法的限制,因为需要手动识别算法的输入参数,这阻止了它在测量领域的广泛使用。本文提出了一种使这些输入参数的选择阶段完全自动化的方法。讨论了所提出方法的计量性能。该方法在合成和实验数据上进行了验证。