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GA-Adaptive Template Matching for Offline Shape Motion Tracking Based on Edge Detection: IAS Estimation from the SURVISHNO 2019 Challenge Video for Machine Diagnostics Purposes

机译:GA - 自适应模板基于边缘检测的离线形状运动跟踪匹配:IAS估算来自Survishno 2019挑战视频的机器诊断目的

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The estimation of the Instantaneous Angular Speed (IAS) has in recent years attracted a growing interest in the diagnostics of rotating machines. Measurement of the IAS can be used as a source of information of the machine condition per se, or for performing angular resampling through Computed Order Tracking, a practice which is essential to highlight the machine spectral signature in case of non-stationary operational conditions. In these regards, the SURVISHNO 2019 international conference held at INSA Lyon on 8-10 July 2019 proposed a challenge about the estimation of the instantaneous non-stationary speed of a fan from a video taken by a smartphone, a pocket, low-cost device which can nowadays be found in everyone's pocket. This work originated by the author to produce an offline motion-tracking of the fan (actually, of the head of its locking-screw) and obtaining then a reliable estimate of the IAS. The here proposed algorithm is an update of the established Template Matching (TM) technique (i.e., in the Signal Processing community, a two-dimensional matched filter), which is here integrated into a Genetic Algorithm (GA) search. Using a template reconstructed from a simplified parametric mathematical model of the features of interest (i.e., the known geometry of the edges of the screw head), the GA can be used to adapt the template to match the search image, leading to a hybridization of template-based and feature-based approaches which allows to overcome the well-known issues of the traditional TM related to scaling and rotations of the search image with respect to the template. Furthermore, it is able to resolve the position of the center of the screw head at a resolution that goes beyond the limit of the pixel grid. By repeating the analysis frame after frame and focusing on the angular position of the screw head over time, the proposed algorithm can be used as an effective offline video-tachometer able to estimate the IAS from the video, avoiding the need for expensive high-resolution encoders or tachometers.
机译:近年来瞬间角速度(IAS)的估计引起了对旋转机器诊断的兴趣。 IAS的测量可以用作机器状况本身的信息源,或者用于通过计算顺序跟踪执行角度重采样,这是在非静止操作条件的情况下突出显示机器光谱特征的实践。在这些方面,2019年7月10日至10日在Insa Lyon举行的Survishno 2019年国际会议提出了关于智能手机,口袋,低成本设备拍摄的视频估计风扇瞬时非静止速度的挑战现在可以在每个人的口袋里找到它。这项工作起源于作者,生产用于风扇(实际上,其锁定螺丝头的头部)的离线动作跟踪,并获得IAS的可靠估计。这里提出的算法是建立的模板匹配(TM)技术的更新(即,在信号处理社区,二维匹配滤波器中的二维匹配滤波器中),其在这里集成到遗传算法(GA)搜索中。使用从感兴趣的特征的简化参数数学模型重建的模板(即,螺钉头的边缘的已知几何形状),Ga可用于调整模板以匹配搜索图像,导致杂交基于模板和基于特征的方法,其允许克服与搜索图像的缩放和旋转相对于模板相关的传统TM的众所周知的问题。此外,能够以超出像素网格的极限的分辨率来解析螺钉头的中心的位置。通过在框架之后重复分析框架并随着时间的推移聚焦螺钉头的角度位置,所提出的算法可以用作能够从视频中估计IAS的有效的离线视频转速表,避免需要昂贵的高分辨率编码器或转速计。

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