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Minimizing False Peak Errors in Generalized Cross-Correlation Time Delay Estimation Using Subsample Time Delay Estimation

机译:使用子采样时延估计在广义互相关时延估计中最小化错误峰值误差

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摘要

The Generalized cross-correlation (GCC) method is most commonly used for time delay estimation (TDE). However, the GCC method can result in false peak errors (FPEs) especially at a low signal to noise ratio (SNR). These FPEs significantly degrade TDE, since the estimation error, which is the difference between a true time delay and an estimated time delay, is larger than at least one sampling period. This paper introduces an algorithm that estimates two peaks for two cross-correlation functions using three types of signals such as a reference signal, a delayed signal, and a delayed signal with an additional time delay of half a sampling period. A peak selection algorithm is also proposed in order to identify which peak is closer to the true time delay using subsample TDE methods. This paper presents simulations that compare the algorithms' performance for varying amounts of noise and delay. The proposed algorithms can be seen to display better performance, in terms of the probability of the integer TDE errors, as well as the mean and standard deviation of absolute values of the time delay estimation errors.
机译:广义互相关(GCC)方法最常用于时间延迟估计(TDE)。但是,GCC方法会导致错误的峰误差(FPE),尤其是在信噪比(SNR)低的情况下。这些FPE显着降低了TDE,因为估计误差(即真实时间延迟和估计时间延迟之间的差)大于至少一个采样周期。本文介绍了一种算法,该算法使用三种类型的信号(例如参考信号,延迟信号和延迟信号,带有半个采样周期的附加时间延迟)来估计两个互相关函数的两个峰值。还提出了一种峰选择算法,以便使用子样本TDE方法识别哪个峰更接近真实时间延迟。本文提供了仿真,可以比较算法在不同数量的噪声和延迟下的性能。可以看出,在整数TDE误差的概率以及时延估计误差的绝对值的均值和标准差方面,提出的算法显示出更好的性能。

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