An Automatic Interaction Method Using Part Recognition Based on Deep Network for Augmented Reality Assembly Guidance

Xuyue Yin, X. Fan, Jiajie Wang, Rui Liu, Qiang Wang
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引用次数: 2

Abstract

Assembly process of complex electromechanical products can be quite complicated and time consuming because of high quality demands. Aiming at improving the efficiency of the manual assembly process, this paper proposes an automatic interaction method using part recognition for augmented reality (AR) assembly guidance, which improves both the accuracy of part picking and the interaction efficiency of AR guidance system. Taking sample images of similar parts as input and part types as output, a deep neural network model Part R-CNN for part recognition is build based on Faster R-CNN and is further fine-tuned by back propagation. By recognizing the assembly part, the augmented assembly guidance information of the corresponding parts assembly process is triggered in real-time without direct user interaction. Experimental results show that the deep neural network based part recognition method reaches 94% on mean average precision and the average recognition speed is 200ms per image frame. The average speed of AR guidance content triggering is about 20fps. All system performance satisfies the accuracy and real-time requirements of the AR-aided assembly system.
基于深度网络零件识别的增强现实装配引导自动交互方法
复杂机电产品的装配过程对质量要求很高,是一个非常复杂和耗时的过程。为了提高人工装配过程的效率,提出了一种基于零件识别的增强现实(AR)装配引导自动交互方法,既提高了零件选择的准确性,又提高了AR引导系统的交互效率。以相似零件的样本图像为输入,零件类型为输出,在Faster R-CNN的基础上建立零件识别的深度神经网络模型part R-CNN,并通过反向传播进一步微调。通过对装配零件的识别,实时触发相应零件装配过程的增强装配引导信息,无需用户直接交互。实验结果表明,基于深度神经网络的零件识别方法平均识别精度达到94%,平均识别速度为200ms /帧。AR制导内容触发的平均速度约为20fps。系统各项性能均满足ar辅助装配系统的精度和实时性要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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