Flame smoke detection algorithm based on YOLOv5 in petrochemical plant

Yueting Yang, Shaolin Hu, Ye Ke, Runguan Zhou
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Abstract

PurposeFire smoke detection in petrochemical plant can prevent fire and ensure production safety and life safety. The purpose of this paper is to solve the problem of missed detection and false detection in flame smoke detection under complex factory background.Design/methodology/approachThis paper presents a flame smoke detection algorithm based on YOLOv5. The target regression loss function (CIoU) is used to improve the missed detection and false detection in target detection and improve the model detection performance. The improved activation function avoids gradient disappearance to maintain high real-time performance of the algorithm. Data enhancement technology is used to enhance the ability of the network to extract features and improve the accuracy of the model for small target detection.FindingsBased on the actual situation of flame smoke, the loss function and activation function of YOLOv5 model are improved. Based on the improved YOLOv5 model, a flame smoke detection algorithm with generalization performance is established. The improved model is compared with SSD and YOLOv4-tiny. The accuracy of the improved YOLOv5 model can reach 99.5%, which achieves a more accurate detection effect on flame smoke. The improved network model is superior to the existing methods in running time and accuracy.Originality/valueAiming at the actual particularity of flame smoke detection, an improved flame smoke detection network model based on YOLOv5 is established. The purpose of optimizing the model is achieved by improving the loss function, and the activation function with stronger nonlinear ability is combined to avoid over-fitting of the network. This method is helpful to improve the problems of missed detection and false detection in flame smoke detection and can be further extended to pedestrian target detection and vehicle running recognition.
基于YOLOv5的石化装置火焰烟雾检测算法
目的石油化工装置火灾感烟探测可以预防火灾,保证生产安全和生命安全。本文的目的是解决复杂工厂背景下火焰烟雾检测中的漏检和误检问题。本文提出了一种基于YOLOv5的火焰烟雾检测算法。目标回归损失函数(target regression loss function, CIoU)用于改进目标检测中的漏检和误检,提高模型检测性能。改进的激活函数避免了梯度消失,保持了算法的高实时性。数据增强技术用于增强网络提取特征的能力,提高小目标检测模型的精度。根据火焰烟雾的实际情况,对YOLOv5模型的损失函数和激活函数进行了改进。基于改进的YOLOv5模型,建立了一种具有泛化性能的火焰烟雾检测算法。将改进后的模型与SSD和YOLOv4-tiny进行了比较。改进后的YOLOv5模型准确率可达99.5%,对火焰烟雾的检测效果更加准确。改进后的网络模型在运行时间和精度上都优于现有的网络模型。针对火焰烟雾检测的实际特殊性,建立了一种基于YOLOv5改进的火焰烟雾检测网络模型。通过改进损失函数来达到优化模型的目的,并结合非线性能力较强的激活函数来避免网络的过拟合。该方法有助于改善火焰烟雾检测中的漏检和误检问题,并可进一步推广到行人目标检测和车辆运行识别中。
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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