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Multiscale kernel sparse coding-based classifier for HRRP radar target recognition

机译:基于多尺度核稀疏编码的HRRP雷达目标识别器

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摘要

With the combined multiscale Gaussian kernel and Morlet wavelet kernel, two multiscale kernel sparse coding-based classifiers (MKSCCs) are proposed for radar target recognition using high-resolution range profiles (HRRPs). The kernel trick can make samples more clustered in higher-dimensional space. Moreover, the multiscale kernels at different scales have advantages of good generalisation and primary signature capturing ability for target's HRRP, which are helpful to improve the target recognition accuracy and robustness of MKSCC further. Numerous experiments are conducted on five types of ground vehicles' HRRP data and the authors also make comparisons with the KSCC and some related recognition methods. The results demonstrate the effectiveness of the proposed method.
机译:结合多尺度高斯核和Morlet小波核,提出了两个基于多尺度核稀疏编码的分类器(MKSCC),用于使用高分辨率距离剖面(HRRP)进行雷达目标识别。内核技巧可以使样本在更高维度的空间中更加聚类。此外,不同尺度的多尺度核具有良好的泛化性和对目标HRRP的原始签名捕获能力,有利于进一步提高目标识别的准确性和MKSCC的鲁棒性。针对五种地面车辆的HRRP数据进行了大量实验,作者还与KSCC和一些相关的识别方法进行了比较。结果证明了该方法的有效性。

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