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首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >Active Sonar Detection in Reverberation via Signal Subspace Extraction Algorithm
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Active Sonar Detection in Reverberation via Signal Subspace Extraction Algorithm

机译:信号子空间提取算法在混响中主动声纳检测

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摘要

This paper presents a new algorithm called Signal Subspace Extraction (SSE) for detecting and estimating target echoes in reverberation. The new algorithm can be taken as an extension of the Principal Component Inverse (PCI) and maintains the benefit of PCI algorithm and moreover shows better performance due to a more reasonable reverberation model. In the SSE approach, a best low-rank estimate of a target echo is extracted by decomposing the returns into short duration subintervals and by invoking the Eckart-Young theorem twice. It was assumed that CW is less efficiency in lower Doppler than broadband waveforms in spectrum methods; however, the subspace methods show good performance in detection whatever the respective Doppler is. Hence, the signal emitted by active sonar is CW in the new algorithm which performs well in detection and estimation even when low Doppler is low. Further, a block forward matrix is proposed to extend the algorithm to the sensor array problem. The comparison among the block forward matrix, the conventional matrix, and the three-mode array is discussed. Echo separation is also provided by the new algorithm. Examples are presented using both real, active-sonar data and simulated data.
机译:本文提出了一种新的算法,称为信号子空间提取(SSE),用于检测和估计混响中的目标回声。新算法可以作为主成分逆(PCI)的扩展,并保留了PCI算法的优势,而且由于混响模型更合理,因此表现出更好的性能。在SSE方法中,通过将收益分解成短时子间隔并两次调用Eckart-Young定理,可以提取出目标回波的最佳低秩估计。假设在频谱方法中,在较低的多普勒频谱中,CW的效率要低于宽带波形。但是,无论各个多普勒仪是什么,子空间方法在检测中都表现出良好的性能。因此,在新算法中,有源声纳发出的信号是连续波,即使在低多普勒频率很低的情况下,也能在检测和估计方面表现出色。此外,提出了块前向矩阵以将算法扩展到传感器阵列问题。讨论了块前向矩阵,常规矩阵和三模式阵列之间的比较。新算法还提供了回声分离。给出了使用真实,主动声纳数据和模拟数据的示例。

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