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A Reading Recognition Model of Pointer Type Oil-level Meter Based on Improved Resnet

机译:基于改进RESET的指针型油位仪表读取识别模型

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摘要

At present, the reading recognition of pointer type oil level meter mainly depends on manual observation, which is not accurate due to different scenes and perspectives. And traditional methods based on Hough transform are designed according to expert experience, which is inconvenient to be used by the staffs with little relevant work experience. To improve the automation degree of reading recognition, a model based on improved Resnet and improved Bayesian optimization is proposed in this paper. Firstly, convolution kernel decomposition, more shortcut connection and changeable network structure are adopted to improve Resnet18. Secondly, 3 constrains are added to improve Bayesian optimization to speed up the converge process and reduce network size. Finally, use the improve Bayesian optimization to search the suitable hyperparameter of the network, including initial learning rate, momentum of SGD, L2 regularization factor, filters number of first convolution layer, and the number of residual blocks. Example shows that the improved Bayesian optimization can help to converge faster with a small size of network, and improved Resnet performs the best compared with other classical deep learning network.
机译:目前,指针型油位仪表的阅读识别主要取决于手动观察,由于不同的场景和观点而言是不准确的。基于Hough变换的传统方法是根据专家体验设计的,员工与相关工作经验很少使用的是不方便的。为了提高阅读识别自动化程度,本文提出了一种基于改进的Reset和改进贝叶斯优化的模型。首先,采用卷积核分解,更快捷的连接和可变的网络结构来改进Reset18。其次,添加了3个约束以提高贝叶斯优化以加快收敛过程并降低网络大小。最后,使用完善的贝叶斯优化搜索网络的合适的网络,包括初始学习率,SGD的动量,L2正则化因子,过滤器的第一卷积层数,以及残余块的数量。示例说明,改进的贝叶斯优化可以帮助汇聚速度小的网络,而改进的Reset与其他经典深度学习网络相比最佳。

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