Ethylene leakage detection has become one of the most important research directions in the field of target detection due to the fact that ethylene leakage in the petrochemical industry is closely related to production safety and environmental pollution. Under infrared conditions, there are many factors that affect the texture characteristics of ethylene, such as ethylene concentration, background, and so on. We find that the detection criteria used in infrared imaging ethylene leakage detection research cannot fully reflect real-world production conditions, which is not conducive to evaluate the performance of current image-based target detection methods. Therefore, we create a new infrared image dataset of ethylene leakage with different concentrations and backgrounds, including 54275 images. We use the proposed dataset benchmark to evaluate seven advanced image-based target detection algorithms. Experimental results demonstrate the performance and limitations of existing algorithms, and the dataset benchmark has good versatility and effectiveness.
翻译:由于乙烯泄漏与生产安全和环境污染密切相关,因此乙烯泄漏检测已经成为目标检测领域中最重要的研究方向之一。在红外条件下,有许多因素会影响乙烯的纹理特征,例如乙烯浓度、背景等。我们发现,红外成像乙烯泄漏检测研究中使用的检测标准不能充分反映真实世界的生产条件,这不利于评估当前基于图像的目标检测方法的性能。因此,我们创建了一个新的红外图像数据集,包括54275张不同浓度和背景的乙烯泄漏图像。我们使用所提出的数据集基准来评估七种先进的基于图像的目标检测算法。实验结果展示了现有算法的性能和局限性,且该数据集基准具有良好的通用性和有效性。