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首页> 外文期刊>IEEE Transactions on Signal Processing >On wavelet denoising and its applications to time delay estimation
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On wavelet denoising and its applications to time delay estimation

机译:小波去噪及其在时延估计中的应用

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The application of dyadic wavelet decomposition in the context of time delay estimation is investigated. We consider a model in which the source signal is deterministic and the received sensor outputs are corrupted by additive noises. Wavelet denoising is exploited to provide an effective solution for the problem. Denoising is first applied to preprocess the received signals from two spatially separated sensors with an attempt to remove the contamination, and the peak of their cross correlation function is then located from which the time delay between the two signals can be derived. A novel wavelet shrinkage/thresholding technique for denoising is introduced, and the performance of the algorithm is analyzed rigorously. It is proved that the proposed method achieves global convergence with a high probability. Simulation results also corroborate that the technique is efficient and performs significantly better than both the generalized cross correlator (GCC) and the direct cross correlator (CC).
机译:研究了二进小波分解在时延估计中的应用。我们考虑一个模型,其中源信号是确定性的,并且接收到的传感器输出会因加性噪声而损坏。利用小波去噪为该问题提供了有效的解决方案。首先应用去噪对来自两个在空间上分离的传感器的接收信号进行预处理,以尝试去除污染物,然后确定它们的互相关函数的峰值,从中可以得出两个信号之间的时间延迟。介绍了一种新的去噪小波收缩/阈值技术,并对算法的性能进行了严格的分析。实践证明,该方法具有较高的全局收敛性。仿真结果还证实了该技术是有效的,并且其性能比广义互相关器(GCC)和直接互相关器(CC)都要好。

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