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Time-frequency detection of slowly varying periodic signals with harmonics: Methods and performance evaluation

机译:具有谐波的缓慢变化的周期信号的时频检测:方法和性能评估

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摘要

We consider the problem of detecting an unknown signal from an unknown noise type. We restrict the signal type to a class of slowly varying periodic signals with harmonic components, a class which includes real signals such as the electroencephalogram or speech signals. This paper presents two methods designed to detect these signal types: the ambiguity filter and the time-frequency correlator. Both methods are based on different modifications of the time-frequency-matched filter and both methods attempt to overcome the problem of predefining the template set for the matched filter. The ambiguity filter method reduces the number of required templates by one half; the time-frequency correlator method does not require a predefined template set at all. To evaluate their detection performance, we test the methods using simulated and real data sets. Experiential results show that the two proposed methods, relative to the time-frequency-matched filter, can more accurately detect speech signals and other simulated signals in the presence of coloured Gaussian noise. Results also show that all time-frequency methods outperform the classical time-domain-matched filter for both simulated and real signals, thus demonstrating the utility of the time-frequency detection approach.
机译:我们考虑从未知噪声类型检测未知信号的问题。我们将信号类型限制为具有谐波成分的一类缓慢变化的周期性信号,该类包括诸如脑电图或语音信号之类的真实信号。本文提出了两种检测这些信号类型的方法:歧义滤波器和时频相关器。两种方法都基于对时频匹配滤波器的不同修改,并且两种方法都试图克服为匹配滤波器预定义模板集的问题。模糊度过滤方法将所需模板的数量减少了一半;时频相关器方法根本不需要预定义的模板集。为了评估其检测性能,我们使用模拟和真实数据集测试了这些方法。实验结果表明,相对于时频匹配滤波器,这两种方法在存在彩色高斯噪声的情况下可以更准确地检测语音信号和其他模拟信号。结果还表明,所有时频方法在模拟信号和实际信号上均优于经典的时域匹配滤波器,从而证明了时频检测方法的实用性。

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