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基于动态多核学习的YOLOv8-Seg用于红外气体泄漏分割:一种弱监督方法。

YOLOv8-Seg with Dynamic Multi-Kernel Learning for Infrared Gas Leak Segmentation: A Weakly Supervised Approach.

作者信息

Shen Haoyang, Xu Lushuai, Wang Mingyue, Dong Shaohua, Xu Qingqing, Li Feng, Yu Haiyang

机构信息

College of Carbon Neutral Energy, China University of Petroleum, Beijing 102249, China.

College of Artificial Intelligence, China University of Petroleum, Beijing 102249, China.

出版信息

Sensors (Basel). 2025 Aug 10;25(16):4939. doi: 10.3390/s25164939.

Abstract

Gas leak detection in oil and gas processing facilities is a critical component of the safety production monitoring system. Non-contact detection technology based on infrared imaging has emerged as a vital real-time monitoring method due to its rapid response and extensive coverage. However, existing pixel-level segmentation networks face challenges such as insufficient segmentation accuracy, rough gas edges, and jagged boundaries. To address these issues, this study proposes a novel pixel-level segmentation network training framework based on anchor box annotation and enhances the segmentation performance of the YOLOv8-seg network for gas detection applications. First, a dynamic threshold is introduced using the Visual Background Extractor (ViBe) method, which, in combination with the YOLOv8-det network, generates binary masks to serve as training masks. Next, a segmentation head architecture is designed, incorporating dynamic kernels and multi-branch collaboration. This architecture utilizes feature concatenation under deformable convolution and attention mechanisms to replace parts of the original segmentation head, thereby enhancing the extraction of detailed gas features and reducing dependency on anchor boxes during segmentation. Finally, a joint Dice-BCE (Binary Cross-Entropy) loss, weighted by ViBe-CRF (Conditional Random Fields) confidence, is employed to replace the original Seg_loss. This effectively reduces roughness and jaggedness at gas edges, significantly improving segmentation accuracy. Experimental results indicate that the improved network achieves a 6.4% increase in F1 score and a 7.6% improvement in the mIoU (mean Intersection over Union) metric. This advancement provides a new, real-time, and efficient detection algorithm for infrared imaging of gas leaks in oil and gas processing facilities. Furthermore, it introduces a low-cost weakly supervised learning approach for training pixel-level segmentation networks.

摘要

油气处理设施中的气体泄漏检测是安全生产监测系统的关键组成部分。基于红外成像的非接触检测技术因其响应迅速、覆盖范围广,已成为一种重要的实时监测方法。然而,现有的像素级分割网络面临分割精度不足、气体边缘粗糙和边界参差不齐等挑战。为解决这些问题,本研究提出了一种基于锚框标注的新型像素级分割网络训练框架,并提高了YOLOv8-seg网络在气体检测应用中的分割性能。首先,使用视觉背景提取器(ViBe)方法引入动态阈值,该方法与YOLOv8-det网络相结合,生成二进制掩码作为训练掩码。接下来,设计了一种分割头架构,纳入动态内核和多分支协作。该架构利用可变形卷积和注意力机制下的特征拼接来替换原始分割头的部分,从而增强对气体详细特征的提取,并在分割过程中减少对锚框的依赖。最后,采用由ViBe-条件随机场(CRF)置信度加权的联合骰子-二元交叉熵(BCE)损失来替换原始的分割损失。这有效地减少了气体边缘的粗糙度和参差不齐,显著提高了分割精度。实验结果表明,改进后的网络在F1分数上提高了6.4%,在平均交并比(mIoU)指标上提高了7.6%。这一进展为油气处理设施中气体泄漏的红外成像提供了一种新实时、高效的检测算法。此外,它还引入了一种低成本的弱监督学习方法来训练像素级分割网络。

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