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Reproducing Kernel Hilbert Space Methods to Reduce Pulse Compression Sidelobes

机译:重现内核希尔伯特空间方法以减少脉冲压缩旁瓣

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Since the development of pulse compression in the mid-1950's the concept has become an indispensable feature of modern radar systems. A matched filter is used on reception to maximize the signal to noise ratio of the received signal. The actual waveforms that are transmitted are chosen to have an autocorrelation function with a narrow peak at zero time shift and the other values, referred to as sidelobes, as low as possible at all other times. A new approach to radar pulse compression is introduced, namely the Reproducing Kernel Hilbert Space (RKHS) method. This method reduces sidelobe levels significantly. The paper compares a second degree polynomial kernel RKHS method to a least squares and L_(2p)-norm mismatched filter, and concludes with a presentation of the representative testing results.
机译:自从1950年代中期脉冲压缩技术发展以来,该概念已成为现代雷达系统不可或缺的功能。在接收时使用匹配滤波器,以使接收信号的信噪比最大。选择要发送的实际波形,使其具有自相关函数,该函数在零时移时具有较窄的峰值,而其他值(称为旁瓣)在所有其他时间均尽可能低。引入了一种新的雷达脉冲压缩方法,即再生核希尔伯特空间(RKHS)方法。此方法可显着降低旁瓣水平。本文将二阶多项式核RKHS方法与最小二乘和L_(2p)-范数不匹配滤波器进行了比较,并给出了代表性的测试结果。

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