Key technologies of smart factory machine vision based on efficient deep network model

Fan Zhang, Kunfan Wang
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引用次数: 2

Abstract

Most of the existing smart space machine vision technologies are oriented to specific applications, which are not conducive to knowledge sharing and reuse. Most smart devices require people to participate in control and cannot actively provide services for people. In response to the above problems, this research proposes a smart factory based on a deep network model, which is capable of data mining and analysis based on a huge database, enabling the factory to have self-learning capabilities. On this basis, tasks such as optimization of energy consumption and automatic judgment of production decisions are completed. Based on the deep network model, the accuracy of the model for image analysis is improved. Increasing the number of hidden layers will cause errors in the neural network and increase the amount of calculation. The appropriate number of neurons can be selected according to the characteristics of the model. When the IoU threshold is taken as 0.75, its performance is improved by 1.23% year-on-year. The residual structure composed of asymmetric multiple convolution kernels not only increases the number of feature extraction layers, but also allows the asymmetric image details to be better preserved. The recognition accuracy of the trained deep network model reaches 99.1%, which is much higher than other detection models, and its average recognition time is 0.175s. In the research of machine vision technology, the smart factory based on the deep network model not only maintains a high recognition accuracy rate, but also meets the real- time requirements of the system.
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基于高效深度网络模型的智能工厂机器视觉关键技术
现有的智能空间机器视觉技术大多面向特定应用,不利于知识共享和重用。大多数智能设备需要人参与控制,不能主动为人提供服务。针对上述问题,本研究提出了一种基于深度网络模型的智能工厂,能够基于庞大的数据库进行数据挖掘和分析,使工厂具有自学习能力。在此基础上,完成了能耗优化、生产决策自动判断等任务。在深度网络模型的基础上,提高了模型用于图像分析的精度。增加隐藏层的数量会导致神经网络出现误差,增加计算量。可以根据模型的特点选择合适的神经元数量。当IoU阈值为0.75时,其业绩同比提升1.23%。由非对称多个卷积核组成的残差结构不仅增加了特征提取的层数,而且可以更好地保留非对称图像的细节。训练后的深度网络模型识别准确率达到99.1%,远高于其他检测模型,平均识别时间为0.175s。在机器视觉技术的研究中,基于深度网络模型的智能工厂不仅保持了较高的识别准确率,而且满足了系统的实时性要求。
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