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Human motion segmentation and recognition using machine vision for mechanical assembly operation

机译:使用机器视觉进行机械装配操作的人体运动分割和识别

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摘要

The observation, decomposition and record of motion are usually accomplished through artificial means during the process of motion analysis. This method not only has a heavy workload, its efficiency is also very low. To solve this problem, this paper proposes a novel method to segment and recognize continuous human motion automatically based on machine vision for mechanical assembly operation. First, the content-based dynamic key frame extraction technology was utilized to extract key frames from video stream, and then automatic segmentation of action was implemented. Further, the SIFT feature points of the region of interest (ROIs) were extracted, on the basis of which the characteristic vector of the key frame was derived. The feature vector can be used not only to represent the characteristic of motion, but also to describe the connection between motion and environment. Finally, the classifier is constructed based on support vector machine (SVM) to classify feature vectors, and the type of therblig is identified according to the classification results. Our approach enables robust therblig recognition in challenging situations (such as changing of light intensity, dynamic backgrounds) and allows automatic segmentation of motion sequences. Experimental results demonstrate that our approach achieves recognition rates of 96.00 % on sample video which captured on the assembly line.
机译:运动的观察,分解和记录通常是在运动分析过程中通过人工手段完成的。这种方法不仅工作量大,而且效率也很低。为了解决这个问题,本文提出了一种新的方法,该方法可以基于机器视觉自动分割和识别连续的人体运动,以进行机械装配操作。首先,利用基于内容的动态关键帧提取技术从视频流中提取关键帧,然后实现动作的自动分割。此外,提取感兴趣区域(ROI)的SIFT特征点,并在此基础上得出关键帧的特征向量。特征向量不仅可以用来表示运动的特征,而且可以用来描述运动与环境之间的联系。最后,基于支持向量机(SVM)构造分类器,对特征向量进行分类,并根据分类结果识别出rbrblig的类型。我们的方法可以在挑战性的情况下(例如,改变光强度,动态背景)实现稳健的rbrblig识别,并可以自动分割运动序列。实验结果表明,我们的方法在流水线上捕获的示例视频上实现了96.00%的识别率。

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