不同神经网络架构在超宽带信号处理中对不同目标分类的适用性

K. Greitans, M. Greitans
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引用次数: 0

摘要

本文讨论了CNN、RNN、Transformers、CNN/LSTM、ResNet和MLP等不同的人工神经网络(ANN)架构在超宽带脉冲无线电雷达信号分类中的性能。信号是通过反射和传递UWB脉冲通过不同的物质对象获得的,这些物质对象提供不同的分类目的信息。在分类精度、训练时间和内存需求等方面对不同的人工神经网络进行了比较。训练数据由144个物体组成,包括正常和破碎的PET瓶、玻璃瓶和金属罐。结果表明,采用超宽带雷达的单静态(对反射信号进行分析)、双静态(对波谷信号进行传播)和多静态设置,分类精度较高。对于单通道情况,GRU (99.65%), Resnet (99.69%), Transformer(99.66%)架构是优选的,而Transformer的最高多静态评估精度达到99.90%。正如预期的那样,越密集的人工神经网络分类效果越好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applicability of different neural network architectures in UWB signal processing for different object classification
In the paper, the performance of different Artificial neural network (ANN) architectures - CNN, RNN, Transformers, CNN/LSTM, ResNet, and MLP is discussed in UWB impulse radio radar signal classification. The signals are obtained by reflecting and passing UWB pulses through different material objects that give different information for the classification purpose. The ANN architectures are compared on their classification precision, training time, and memory requirements. The training data consists of 144 objects including regular and crashed PET bottles, glass bottles, and metal cans. The results show the accuracy's of classification if mono-static (reflected signals are analyzed), bistatic (propagated trough signals), and multi-static setups of UWB radar are used. For single-channel cases GRU (99.65%), Resnet (99.69%), Transformer (99.66%) architectures are preferable, while the highest multi-static evaluation accuracy reaches 99.90% for the Transformer. As expected the more dense ANN networks perform better classification.
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