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A Neural Network with Convolutional Module and Residual Structure for Radar Target Recognition Based on High-Resolution Range Profile

机译:基于卷积模块和残差结构的神经网络基于高分辨率距离剖面的雷达目标识别

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摘要

In the conventional neural network, deep depth is required to achieve high accuracy of recognition. Additionally, the problem of saturation may be caused, wherein the recognition accuracy is down-regulated with the increase in the number of network layers. To tackle the mentioned problem, a neural network model is proposed incorporating a micro convolutional module and residual structure. Such a model exhibits few hyper-parameters, and can extended flexibly. In the meantime, to further enhance the separability of features, a novel loss function is proposed, integrating boundary constraints and center clustering. According to the experimental results with a simulated dataset of HRRP signals obtained from thirteen 3D CAD object models, the presented model is capable of achieving higher recognition accuracy and robustness than other common network structures.
机译:在传统的神经网络中,需要很深的深度才能实现高精度的识别。另外,可能引起饱和问题,其中随着网络层数的增加,识别精度被下调。为了解决上述问题,提出了一种包含微卷积模块和残差结构的神经网络模型。这种模型几乎没有超参数,并且可以灵活扩展。同时,为了进一步增强特征的可分离性,提出了一种新的损失函数,将边界约束和中心聚类相结合。根据从13个3D CAD对象模型获得的HRRP信号的模拟数据集的实验结果,提出的模型比其他常见网络结构能够实现更高的识别精度和鲁棒性。

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