Faculty of Technical Sciences, University of Warmia and Mazury in Olsztyn, 46 A, Słoneczna St., 10-710 Olsztyn, Poland.
Department of Mechanics and Structural Engineering, Faculty of Civil Engineering and Architecture, Opole University of Technology, 45-061 Opole, Poland.
Sensors (Basel). 2021 Sep 30;21(19):6572. doi: 10.3390/s21196572.
One of the most important features of the proper operation of technical objects is monitoring the vibrations of their mechanical components. The currently significant proportion of the research methods in this regard includes a group of research methods based on the conversion of vibrations using sensors providing data from individual locations. In parallel with the continuous improvement of these tools, new methods for acquiring information on the condition of the object have emerged due to the rapid development of visual systems. Their actual effectiveness determined the switch from research laboratories to actual industrial installations. In many cases, the application of the visualization methods can supplement the conventional methods applied and, under particular conditions, can effectively replace them. The decisive factor is their non-contact nature and the possibility for simultaneous observation of multiple points of the selected area. Visual motion magnification (MM) is an image processing method that involves the conscious and deliberate deformation of input images to the form that enables the visual observation of vibration processes which are not visible in their natural form. The first part of the article refers to the basic terms in the field of expressing motion in an image (based on the Lagrangian and Eulerian approaches), the formulation of the term of optical flow (OF), and the interpretation of an image in time and space. The following part of the article reviews the main processing algorithms in the aspect of computational complexity and visual quality and their modification for applications under specific conditions. The comparison of the MM methods presented in the paper and recommendations for their applications across a wide variety of fields were supported with examples originating from recent publications. The effectiveness of visual methods based on motion magnification in machine diagnosis and the identification of malfunctions are illustrated with selected examples of the implementation derived from authors' workshop practice under industrial conditions.
技术对象正常运行的最重要特征之一是监测其机械部件的振动。目前,这方面的研究方法主要包括一组基于使用传感器将振动转换为提供来自各个位置的数据的研究方法。随着这些工具的不断改进,由于视觉系统的快速发展,出现了获取有关对象状况信息的新方法。由于它们的实际有效性,这些方法已经从研究实验室转移到了实际的工业设备中。在许多情况下,可视化方法的应用可以补充传统的应用方法,并且在特定条件下,可以有效地替代它们。决定性因素是它们的非接触性质以及同时观察所选区域的多个点的可能性。视觉运动放大(MM)是一种图像处理方法,涉及到有意识地和故意地将输入图像变形为能够以自然形式不可见的振动过程的视觉观察的形式。文章的第一部分涉及在图像中表达运动的基本术语(基于拉格朗日和欧拉方法)、光流(OF)的表述以及时空图像的解释。文章的下一部分从计算复杂性和视觉质量方面审查了主要的处理算法,并针对特定条件下的应用对其进行了修改。本文介绍的 MM 方法的比较以及在广泛的领域中的应用建议,都通过来自近期出版物的示例进行了支持。基于运动放大的视觉方法在机器诊断和故障识别中的有效性,通过作者在工业条件下的车间实践中得出的实施例得到了说明。