School of Electronic and Information Engineering, MOE Key Lab for Intelligent Networks and Network Security, Xi'an Jiaotong University, Xi'an 710049, China.
AECC Sichuan Gas Turbine Establishment, Mianyang 621000, China.
Sensors (Basel). 2021 Jun 29;21(13):4453. doi: 10.3390/s21134453.
Due to carbon deposits, lean flames, or damaged metal parts, sparks can occur in aero engine chambers. At present, the detection of such sparks deeply depends on laborious manual work. Considering that interference has the same features as sparks, almost all existing object detectors cannot replace humans in carrying out high-precision spark detection. In this paper, we propose a scene-aware spark detection network, consisting of an information fusion-based cascading video codec-image object detector structure, which we name SAVSDN. Unlike video object detectors utilizing candidate boxes from adjacent frames to assist in the current prediction, we find that efforts should be made to extract the spatio-temporal features of adjacent frames to reduce over-detection. Visualization experiments show that SAVSDN can learn the difference in spatio-temporal features between sparks and interference. To solve the problem of a lack of aero engine anomalous spark data, we introduce a method to generate simulated spark images based on the Gaussian function. In addition, we publish the first simulated aero engine spark data set, which we name SAES. In our experiments, SAVSDN far outperformed state-of-the-art detection models for spark detection in terms of five metrics.
由于碳沉积物、贫燃火焰或损坏的金属部件,航空发动机室内可能会出现火花。目前,这种火花的检测在很大程度上依赖于艰苦的人工工作。考虑到干扰具有与火花相同的特征,几乎所有现有的目标探测器都无法替代人类进行高精度的火花检测。在本文中,我们提出了一种基于场景感知的火花检测网络,该网络由基于信息融合的级联视频编解码器-图像目标检测结构组成,我们将其命名为 SAVSDN。与利用相邻帧中的候选框来辅助当前预测的视频目标探测器不同,我们发现应该努力提取相邻帧的时空特征以减少过检测。可视化实验表明,SAVSDN 可以学习火花和干扰之间的时空特征差异。为了解决航空发动机异常火花数据缺乏的问题,我们引入了一种基于高斯函数生成模拟火花图像的方法。此外,我们发布了第一个模拟航空发动机火花数据集,我们将其命名为 SAES。在我们的实验中,SAVSDN 在五个指标上的火花检测性能远远优于最先进的检测模型。