This paper employed deep learning to do two-dimensional, multi-target locating in Through-the-Wall Radar under conditions where the wall is treated as a complex electromagnetic medium. We made five assumptions about the wall and two about the number of targets. There are two target modes available: single target and double targets. The wall scenarios include a homogeneous wall, a wall with an air gap, an inhomogeneous wall, an anisotropic wall, and an inhomogeneous-anisotropic wall. Target locating is accomplished through the use of a deep neural network technique. We constructed a dataset using the Python FDTD module and then modeled it using deep learning. Assuming the wall is a complex electromagnetic medium, we achieved 97.7% accuracy for single-target 2D locating and 94.1% accuracy for two-target locating. Additionally, we noticed a loss of 10% to 20% inaccuracy when noise was added at low SNRs, although this decrease dropped to less than 10% at high SNRs.
翻译:本文利用深层次的学习,在隔离墙被视为复杂电磁介质的条件下,在隔墙雷达中进行二维、多目标定位。 我们对墙壁做了五个假设,对目标数量做了两个假设。有两种目标模式:单一目标和双重目标。墙壁情景包括同质墙、一面墙、一面隔热墙、一面不相形色墙、一面不相色墙和一面不相形色异的氮化墙。目标定位是通过使用深神经网络技术完成的。我们用Python FDTD模块建造了一个数据集,然后用深层学习模拟。假设墙是复杂的电磁介质,我们为单目标2D定位实现了97.7%的精确度,两点定位实现了94.1%的精确度。此外,我们注意到低神经核中添加噪音时损失了10%至20%的不准确度,尽管这一下降在高神经研究中心下降到不到10%。