School of Mechanical Engineering, Dalian University of Technology of China, Dalian 116024, China.
Sensors (Basel). 2023 May 7;23(9):4542. doi: 10.3390/s23094542.
The minimum resolvable temperature difference (MRTD) at which a four-rod target can be resolved is a critical parameter used to assess the comprehensive performance of thermal imaging systems, which is important for technological innovation in military and other fields. Recently, there have been some attempts to use an automatic objective approach based on deep learning to take the place of the classical manual subjective MRTD measurement approach, which is strongly affected by the psychological subjective factors of the experimenter and is limited in accuracy and speed. However, the scale variability of four-rod targets and the low pixels of infrared thermal cameras have turned out to be a challenging problem for automatic MRTD measurement. We propose a multiscale deblurred feature extraction network (MDF-Net), a backbone based on a yolov5 neural network, in an attempt to solve the aforementioned problem. We first present a global attention mechanism (GAM) attention module to represent strong images of the four-rod targets. Next, a Rep VGG module is introduced to decrease the blur. Our experiments show that the proposed method achieves the desired effect and state-of-the-art detection results, which innovatively improve the accuracy of four-rod target detection to 82.3% and thus make it possible for the thermal imagers to see further and to respond faster and more accurately.
可分辨最小温差(MRTD)是评估热成像系统综合性能的一个关键参数,对于军事和其他领域的技术创新至关重要。最近,有人试图使用基于深度学习的自动客观方法来替代经典的手动主观 MRTD 测量方法,这种方法受实验者心理主观因素的影响较大,并且在准确性和速度上存在局限性。然而,四杆目标的尺度可变性和红外热像仪的低像素对自动 MRTD 测量来说是一个具有挑战性的问题。我们提出了一种多尺度去模糊特征提取网络(MDF-Net),该网络以 yolov5 神经网络为骨干,试图解决上述问题。我们首先提出了一种全局注意机制(GAM)注意力模块,以表示四杆目标的强图像。接下来,引入了 Rep VGG 模块来减少模糊。我们的实验表明,所提出的方法达到了预期的效果和最先进的检测结果,创新性地将四杆目标检测的准确性提高到 82.3%,从而使热像仪能够看得更远、响应更快、更准确。