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Principal component separation in sparse signal recovery for harmonic retrieval

机译:稀疏信号恢复中谐波提取的主成分分离

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Methods for best basis selection (BBS) can be used to address the problem of harmonic retrieval using a large basis of harmonically related complex sinusoids with an iterative reweighted BBS method. This approach produces a data-consistent representation with a maximally sparse set of non-zero expansion coefficients. The method is modified to accommodate the presence of additive white noise by the application of principal component separation or SVD truncation. Using computer simulations for a classic example involving two closely spaced complex sinusoids, we illustrate the properties and performance of this frequency estimator in comparison to its predecessor, the adaptive extrapolation method. Over a limited range of low SNR values, the method performs better than many of the established harmonic retrieval techniques, despite the presence of an estimation bias.
机译:最佳基础选择(BBS)方法可用于解决谐波检索问题,该方法使用大量基础上与谐波相关的复杂正弦波进行迭代重加权BBS方法。此方法使用最大稀疏的非零扩展系数集来生成数据一致的表示形式。通过应用主成分分离或SVD截断,对方法进行了修改,以适应加性白噪声的存在。使用计算机模拟一个涉及两个紧密间隔的复杂正弦波的经典示例,我们说明了该频率估算器与其前身自适应外推法相比的特性和性能。在低SNR值的有限范围内,尽管存在估计偏差,但该方法的性能优于许多已建立的谐波检索技术。

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