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Motion process monitoring using optical flow–based principal component analysis-independent component analysis method:

机译:使用基于光流的主成分分析-独立成分分析方法进行运动过程监控:

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In this article, for the first time, the optical flow and principal component analysis followed independent component analysis are combined for monitoring the motion process of robotic-arm-based system. Two kinds of optical flow, namely dense optical flow and sparse optical flow, extracted from each two successive frames of motion process in forms of video stream are used as the samples of motion-related variables of principal component analysis–independent component analysis algorithm. Relative work illustrates the effectiveness of principal component analysis–independent component analysis method for non-Gaussian process monitoring. The proposed dense optical flow–principal component analysis–independent component analysis and sparse optical flow–principal component analysis–independent component analysis algorithms use three-way array as their data which follows non-Gaussian distribution. Data unfolding, data normalization, and proper definition of the control limit are introduced. Based on dense optic...
机译:在本文中,首次将光流和主成分分析以及独立成分分析相结合,以监视基于机械手臂的系统的运动过程。从运动过程的每两个连续帧以视频流的形式提取的两种光流,即密集光流和稀疏光流,用作主成分分析-独立成分分析算法的与运动有关的变量的样本。相关工作说明了用于非高斯过程监控的主成分分析-独立成分分析方法的有效性。拟议的密集光流-主成分分析-独立成分分析和稀疏光流-主成分分析-独立成分分析算法使用三路数组作为遵循非高斯分布的数据。介绍了数据展开,数据规范化和对控制限制的正确定义。基于密集光学元件

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