比较预训练的Image-Net CNN与Siamese架构在雷达系统中的少镜头学习应用

Cesar Martinez Melgoza, Kayla Lee, Tyler Groom, Nate Ruppert, K. George, Henry Lin
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引用次数: 0

摘要

多年来,电子设备的增加和技术能力的创新导致电磁频谱的流量增加,从而使雷达系统更难区分具有附加干扰的多个发射器。传统的分类方法,如机器学习,被证明是解决这个问题的合适方法,但是这些模型需要大量的数据来训练和评估。本实验实现了一个Few-Shot学习框架,并评估了不同神经网络架构(如标准卷积神经网络和先前实验中的暹罗网络)的性能。实验将使用不同种类的硬件设备。这包括ZCU104 FPGA板,AD-FMCOMMS2-EBZ RF模块,Jetson TX2和NVIDIA Titan RTX。硬件设备将使用硬件加速等性能指标进行评估,以找到计算能力、加速速度和评估精度之间的最佳中间值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Pretrained Image-Net CNN with a Siamese Architecture for Few-Shot Learning Applications in Radar Systems
Over the years, the increase in electronic devices and innovation towards technological capabilities have resulted in an increase in traffic in the electromagnetic spectrum, thus making it harder for radar systems to distinguish multiple emitters with added interference. Traditional methods for classification, such as machine learning, prove to be a suitable solution for this problem, however these models require an enormous amount of data to train and evaluate. This experiment implements a Few-Shot learning framework and evaluates the performance of different Neural Network Architectures such as a standard Convolutional Neural Network, and a Siamese Network from a previous experiment. The experiment will utilize different kinds of hardware equipment. This includes the ZCU104 FPGA board, AD-FMCOMMS2-EBZ RF module, the Jetson TX2, and NVIDIA Titan RTX. The hardware equipment will be evaluated using performance metrics such as hardware acceleration, to find the best medium between computational power, acceleration speed, and evaluation accuracy.
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