论文标题
基于非常少数的可见或红外图像,火焰状态监测通过几次学习
Flame-state monitoring based on very low number of visible or infrared images via few-shot learning
论文作者
论文摘要
机器学习对基于图像的燃烧监控的目前成功是基于大量数据,这对于工业应用来说甚至是不可能的。为了解决这一冲突,我们介绍了很少的学习学习,以便首次实现燃烧监测和分类。测试了两种算法,即暹罗网络,以及K最近的邻居(SN-KNN)和原型网络(PN)。我们还使用了红外(IR)图像,而不是利用单独可见的图像。我们分析了两种图像格式上两种算法的训练过程,测试性能和推理速度,还使用T-SNE可视化学习的功能。结果表明,SN-KNN和PN都能够将火焰状态与仅使用20张图像的学习区分开。最差的性能是由PN在IR图像上实现的,仍然具有高于0.95的精度,准确性,召回和F1得分。我们表明,可见图像在类之间显示出更大的差异,并且在类中显示了更一致的模式,这使训练速度和模型性能与IR图像相比更好。相比之下,相对较低的IR图像质量使PN难以提取可区分的原型,从而导致相对较弱的性能。在参赛训练集支持分类的情况下,SN-KNN在IR图像方面表现良好。另一方面,从建筑设计中受益,PN在训练和推理方面的速度比SN-KNN的速度要快得多。提出的工作首次分析了算法和图像格式的特征,从而为其在燃烧监控任务中的未来利用提供了指导。
The current success of machine learning on image-based combustion monitoring is based on massive data, which is costly even impossible for industrial applications. To address this conflict, we introduce few-shot learning in order to achieve combustion monitoring and classification for the first time. Two algorithms, Siamese Network coupled with k Nearest Neighbors (SN-kNN) and Prototypical Network (PN), were tested. Rather than utilizing solely visible images as discussed in previous studies, we also used Infrared (IR) images. We analyzed the training process, test performance and inference speed of two algorithms on both image formats, and also used t-SNE to visualize learned features. The results demonstrated that both SN-kNN and PN were capable to distinguish flame states from learning with merely 20 images per flame state. The worst performance, which was realized by PN on IR images, still possessed precision, accuracy, recall, and F1-score above 0.95. We showed that visible images demonstrated more substantial differences between classes and presented more consistent patterns inside the class, which made the training speed and model performance better compared to IR images. In contrast, the relatively low quality of IR images made it difficult for PN to extract distinguishable prototypes, which caused relatively weak performance. With the entrire training set supporting classification, SN-kNN performed well with IR images. On the other hand, benefitting from the architecture design, PN has a much faster speed in training and inference than SN-kNN. The presented work analyzed the characteristics of both algorithms and image formats for the first time, thus providing guidance for their future utilization in combustion monitoring tasks.