一种基于计算机视觉的装配精度检测与智能误差估计方法

Dan-Dan Cui Dan-Dan Cui, Chao Xu Dan-Dan Cui, Hong-Chao Zhou Chao Xu
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引用次数: 0

摘要

本文主要针对机械装配过程中装配误差大、容易遗漏和出错的现状进行了分析。在装配过程中引入计算机视觉,利用视觉图像估计装配误差,从而提高装配精度。为此,通过对神经网络的改进,加入注意机制和测量机制,提高了网络对装配图像特征的提取和区分能力。最后,使用深度学习算法估计图像中的装配特征。最后,仿真实验表明,本文提出的算法在装配精度和误差估计精度上均可提高94.7%。
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A Method for Assembly Accuracy Detection and Intelligent Error Estimation Based on Computer Vision
This article focuses on the current situation of large assembly errors, easy omissions and errors in the mechanical assembly process. Computer vision is introduced in the assembly process, and visual images are used to estimate assembly errors, thereby improving assembly accuracy. To this end, through improvements to the neural network, the addition of attention and measurement mechanisms, the network’s ability to extract and distinguish features from assembly images has been improved. Finally, deep learning algorithms are used to estimate assembly features in the image. Finally, simulation experiments have shown that the algorithm proposed in this paper can achieve 94.7% improvement in assembly accuracy and error estimation accuracy.  
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