Guo Jie, Zhu Chang'an, Lu Siliang, Zhang Dashan, Zhang Chunyu
Appl Opt. 2016 Sep 1;55(25):7186-94. doi: 10.1364/AO.55.007186.
Rotational angle and speed are important parameters for condition monitoring and fault diagnosis of rotating machineries, and their measurement is useful in precision machining and early warning of faults. In this study, a novel vision-based measurement algorithm is proposed to complete this task. A high-speed camera is first used to capture the video of the rotational object. To extract the rotational angle, the template-based Lucas-Kanade algorithm is introduced to complete motion tracking by aligning the template image in the video sequence. Given the special case of nonplanar surface of the cylinder object, a nonlinear transformation is designed for modeling the rotation tracking. In spite of the unconventional and complex form, the transformation can realize angle extraction concisely with only one parameter. A simulation is then conducted to verify the tracking effect, and a practical tracking strategy is further proposed to track consecutively the video sequence. Based on the proposed algorithm, instantaneous rotational speed (IRS) can be measured accurately and efficiently. Finally, the effectiveness of the proposed algorithm is verified on a brushless direct current motor test rig through the comparison with results obtained by the microphone. Experimental results demonstrate that the proposed algorithm can extract accurately rotational angles and can measure IRS with the advantage of noncontact and effectiveness.
旋转角度和速度是旋转机械状态监测与故障诊断的重要参数,其测量在精密加工和故障预警中具有重要作用。在本研究中,提出了一种基于视觉的新型测量算法来完成这项任务。首先使用高速摄像机采集旋转物体的视频。为了提取旋转角度,引入基于模板的Lucas-Kanade算法,通过在视频序列中对齐模板图像来完成运动跟踪。针对圆柱物体非平面表面的特殊情况,设计了一种非线性变换来对旋转跟踪进行建模。尽管该变换形式非常规且复杂,但仅用一个参数就能简洁地实现角度提取。然后进行了仿真以验证跟踪效果,并进一步提出了一种实际的跟踪策略来连续跟踪视频序列。基于所提出的算法,可以准确、高效地测量瞬时转速(IRS)。最后,通过与麦克风测量结果的比较,在无刷直流电机试验台上验证了所提算法的有效性。实验结果表明,所提算法能够准确提取旋转角度,并且能够以非接触和有效的优势测量IRS。