基于深度学习的原油图像智能监测方法

Siwei Shao, Chenglin Yang, Lin Feng
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引用次数: 0

摘要

粗燃料的状态可以反映高炉内的反应程度,对粗燃料进行实时监测和分析可以改善生产性能,稳定高炉的状态。传统的人工采样检测粗燃料工况的结果精度低,且存在危险性和滞后性。为了减少人员的工作量,提高检测的准确性和及时性,本文提出了一种基于深度学习的原油图像智能监控方法。该方法在Mask R-CNN算法的基础上增加了注意机制,提高了检测精度,解决了过拟合问题。为了保证高速运动模糊图像下的检测精度,采用DeblurGAN-v2算法对图像进行去模糊处理;在建立数据集时,通过数据增强来增加样本的数量和类型,使算法能够适应工厂的实际生产环境。通过原油检测实验,验证了该算法在提高清晰图像和模糊图像检测精度方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Monitoring Method of Crude Fuel Images Based On Deep Learning
The conditions of crude fuel can reflect the reaction degree in a blast furnace, and the real-time monitoring and analysis of the crude fuel can improve production performance and stabilize the conditions of the furnace. The results of crude fuel conditions obtained by traditional manual sampling detection are low in accuracy, and have danger and hysteresis. In order to reduce the workload of personnel and improve detection accuracy and timeliness, this paper proposes an intelligent monitoring method of crude fuel images based on deep learning. According to the method, attention mechanisms are added on the basis of a Mask R-CNN algorithm, so that the detection accuracy is improved, and besides, the problem of overfitting is solved. In order to ensure the detection accuracy under high-speed motion blurred images, a DeblurGAN-v2 algorithm is used to deblur the images; and when a dataset is built, data enhancement is used to increase the number and types of samples, so that the algorithm can adapt to the actual production environment of a factory. Through a crude fuel detection experiment, the effectiveness of the algorithm in the aspect of improving the detection accuracy of clear and blurred images is verified.
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