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Radar HRRP Target Recognition Based on t-SNE Segmentation and Discriminant Deep Belief Network

机译:基于t-SNE分割和判别式深度信念网络的雷达HRRP目标识别

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摘要

In radar high-resolution range profile (HRRP)-based target recognition, one of the most challenging tasks is the noncooperative target recognition with imbalanced training data set. This letter presents a novel recognition framework to deal with this problem. The framework is composed of two steps: first, the t-distributed stochastic neighbor embedding (t-SNE) and synthetic sampling are utilized for data preprocessing to provide a well segmented and balanced HRRP data set; second, a discriminant deep belief network (DDBN) is proposed to recognize HRRP data. Compared with the conventional recognition models, the proposed framework not only makes better use of data set inherent structure among HRRP samples for segmentation, but also utilizes high-level features for recognition. Moreover, the DDBN shares latent information of HRRP data globally, which can enhance the ability of modeling the aspect sectors with few HRRP data. The experiments illustrate the meaning of the t-SNE, and validate the effectiveness of the proposed recognition framework with imbalanced HRRP data.
机译:在基于雷达高分辨率距离剖面(HRRP)的目标识别中,最具挑战性的任务之一是具有不平衡训练数据集的非合作目标识别。这封信提出了一个新颖的识别框架来解决这个问题。该框架包括两个步骤:首先,将t分布随机邻居嵌入(t-SNE)和综合采样用于数据预处理,以提供分段良好且平衡的HRRP数据集。其次,提出了区分深度信念网络(DDBN)来识别HRRP数据。与传统的识别模型相比,该框架不仅可以更好地利用HRRP样本之间的数据集固有结构进行分割,而且可以利用高级特征进行识别。此外,DDBN在全球范围内共享HRRP数据的潜在信息,这可以增强使用少量HRRP数据对方面扇区进行建模的能力。实验说明了t-SNE的含义,并通过不平衡的HRRP数据验证了所提出的识别框架的有效性。

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