基于门控递归残差网络(GRRNet)的电大型复杂目标识别

IF 3.5 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Shangyin Liu;Lei Xing;Xiaojun Hao;Shuaige Gong;Qian Xu;Wenjun Qi
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引用次数: 0

摘要

本文提出了一种基于门控递归残差网络的电大型复杂物体识别深度模型。它能充分利用数据包络信息和时间相关性来提高系统的识别性能。对电大物体进行电磁散射特性测量既昂贵又耗时,而且受各种环境因素的影响。引入高频近似技术,即射击和反射射线法(SBR),快速获取电大型复杂物体的高分辨率一维距离像(HRRP)。通过对角反射器和模型车的实测,验证了SBR方法的准确性。利用该方法建立了交通场景中各种车辆的HRRP数据库。深度学习可以自动研究数据的深层特征,在各种分类任务中表现出优异的性能。将残差网络(ResNet)和门控循环单元(GRU)模型相结合,实现目标散射信息的捕获和聚合。ResNet使用一维卷积核和残差块有效捕获每个距离单元内的散射信息,同时避免梯度消失或梯度爆炸问题。GRU将沿空间维度的散射信息聚合,构建目标特征表示。两者的结合可以发挥各自的优势,充分挖掘hrrp信息。与传统方法相比,该模型提取的每一类特征更加集中,体现在t分布随机邻居嵌入的结果中。深度模型的平均识别率达到95.56%,显著高于现有方法。它显示出对噪声的鲁棒性,从而在车联网(IoVs)中显示出良好的实际应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Electrically Large Complex Objects Recognition Based on Gated Recurrent Residual Network (GRRNet)
In this paper, a novel deep model based on gated recurrent residual network for electrically large complex objects recognition is proposed. It can fully exploit the data envelope information and temporal correlation to improve the system recognition performance. Electromagnetic (EM) scattering property measurements for electrically large objects are costly and time-consuming, affected by various environmental factors. The high-frequency approximate technique, namely the shooting and bouncing ray method (SBR), is introduced to quickly acquire high resolution one-dimensional range profile (HRRP) of electrically large complex objects. Both the corner reflector and the model car are measured to validate the accuracy of the SBR method. The method is employed to establish HRRP database for various vehicles in traffic scenarios. Deep learning can automatically study data deep features and show outstanding performance in various classification tasks. The residual network (ResNet) and gated recurrent unit (GRU) models are combined to capture and aggregate scattering information of objects. ResNet uses 1-D convolutional kernels and residual blocks to efficiently capture the scattering information within each distance cell while avoiding gradient vanishing or gradient explosion issue. GRU aggregates scattering information along the spatial dimension to construct object feature representations. The combination of them can take advantage of their respective strengths to fully mine the information of HRRPs. Compared with the conventional methods, the features extracted by the proposed model from each class are more concentrated shown in the result of t-distributed stochastic neighbor embedding. The deep model exhibits a superior average recognition rate up to 95.56%, significantly higher than existing methods. It shows robustness to noise, thereby showcasing good potential for practical applications within the Internet of Vehicles (IoVs).
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来源期刊
CiteScore
6.50
自引率
12.50%
发文量
90
审稿时长
8 weeks
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