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Attention-Based Recurrent Temporal Restricted Boltzmann Machine for Radar High Resolution Range Profile Sequence Recognition

机译:基于注意力的递归时间受限玻尔兹曼机用于雷达高分辨率测距剖面序列识别

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摘要

The High Resolution Range Profile (HRRP) recognition has attracted great concern in the field of Radar Automatic Target Recognition (RATR). However, traditional HRRP recognition methods failed to model high dimensional sequential data efficiently and have a poor anti-noise ability. To deal with these problems, a novel stochastic neural network model named Attention-based Recurrent Temporal Restricted Boltzmann Machine (ARTRBM) is proposed in this paper. RTRBM is utilized to extract discriminative features and the attention mechanism is adopted to select major features. RTRBM is efficient to model high dimensional HRRP sequences because it can extract the information of temporal and spatial correlation between adjacent HRRPs. The attention mechanism is used in sequential data recognition tasks including machine translation and relation classification, which makes the model pay more attention to the major features of recognition. Therefore, the combination of RTRBM and the attention mechanism makes our model effective for extracting more internal related features and choose the important parts of the extracted features. Additionally, the model performs well with the noise corrupted HRRP data. Experimental results on the Moving and Stationary Target Acquisition and Recognition (MSTAR) dataset show that our proposed model outperforms other traditional methods, which indicates that ARTRBM extracts, selects, and utilizes the correlation information between adjacent HRRPs effectively and is suitable for high dimensional data or noise corrupted data.
机译:在雷达自动目标识别(RATR)领域,高分辨率范围轮廓(HRRP)识别引起了极大的关注。但是,传统的HRRP识别方法无法有效地对高维顺序数据建模,并且抗噪能力差。为了解决这些问题,本文提出了一种新的随机神经网络模型,称为基于注意力的递归时间限制玻尔兹曼机(ARTRBM)。利用RTRBM提取判别特征,并采用注意机制选择主要特征。 RTRBM有效地建模高维HRRP序列,因为它可以提取相邻HRRP之间的时间和空间相关性信息。注意机制用于顺序数据识别任务中,包括机器翻译和关系分类,这使得模型更加关注识别的主要特征。因此,RTRBM和注意力机制的结合使我们的模型有效地提取了更多内部相关特征并选择了提取特征的重要部分。此外,该模型在噪声破坏的HRRP数据上表现良好。在移动和静止目标获取与识别(MSTAR)数据集上的实验结果表明,我们提出的模型优于其他传统方法,这表明ARTRBM有效地提取,选择和利用了相邻HRRP之间的相关信息,适用于高维数据或噪声损坏的数据。

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