An Intelligent Area Localization Framework for Rotating Machine Vision Vibration Measurement

ZhaoZhou Cai, Cong Peng, Bingyun Yang, Xiaoyue Liu
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Abstract

Vision-based vibration measurement technology has received extensive attention due to its advantages of non-contact, high spatial resolution, and no-load effect. However, with the complexity of measurement objects and measurement tasks, the existing visual measurement technology is gradually showing greater limitations. Specifically, due to the uncertainty of actual working conditions, not all pixels in the field of view can measure vibration. Therefore, the selection of measurement points needs to rely on prior structural information and artificial experience. Frequent manual point selection tests bring a lot of resource consumption, which greatly reduces the automation degree of visual vibration measurement. This paper focuses on an intelligent area localization method for vibration measurement of rotating machine vision and designs a deep learning-based vibration measurement area localization framework to directly feedback all reliable measurement pixels from image data, which is called the VMAL framework. Firstly, the sub-pixel physical feature information associated with vibration in the data is analyzed through an unsupervised image decomposition network, and then a regularized regional localization network is used to cluster and output reliable regional pixels. Experimental results on a medium-sized single-span rotor platform verify the effectiveness of the proposed method.
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旋转机器视觉振动测量的智能区域定位框架
基于视觉的振动测量技术因其非接触、空间分辨率高、空载效应等优点而受到广泛关注。然而,随着测量对象和测量任务的复杂性,现有的视觉测量技术逐渐显示出较大的局限性。具体来说,由于实际工作条件的不确定性,并非视场中的所有像素点都能测量振动。因此,测点的选择需要依赖于先验结构信息和人工经验。频繁的人工选点试验带来了大量的资源消耗,大大降低了视觉振动测量的自动化程度。本文研究旋转机器视觉振动测量的智能区域定位方法,设计了一种基于深度学习的振动测量区域定位框架,直接反馈图像数据中所有可靠的测量像素,称为VMAL框架。首先,通过无监督图像分解网络分析数据中与振动相关的亚像素物理特征信息,然后利用正则化区域定位网络聚类输出可靠的区域像素;在中型单跨转子平台上的实验结果验证了该方法的有效性。
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