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首页> 外文期刊>The Journal of the Acoustical Society of America >Signal to noise ratio analysis of maximum length sequence deconvolution of overlapping evoked potentials
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Signal to noise ratio analysis of maximum length sequence deconvolution of overlapping evoked potentials

机译:重叠诱发电位最大长度序列反卷积的信噪比分析

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摘要

In this study a general formula for the signal to noise ratio (SNR) of the maximum length sequence (MLS) cleconvolution averaging is developed using- the fi-equency domain framework of the generalized continuous loop averaging deconvolution procedure [Ozdamar and Bohorquez, J. Acoust. Soc. Am. 119, 429-438 (2006)]. This formulation takes advantage of the well known equivalency of energies in the time and frequency domains (Parseval's theorem) to show that in MLS deconvultion, SNR increases with the square root of half of the number of stimuli ill tile sweep. This increase is less than that of conventional averaging which is the square root of the number of sweeps averaged. Unlike arbitrary stimulus sequences that can attenuate or amplify phase unlocked noise depending on the frequency characteristics. the MLS deconvolution attenuates noise in all frequencies consistently. Furthermore, MLS and its zero-padded variations present optimal attenuation of noise at all frequencies yet they present a highly jittered stimulus sequence. In real recordings of evoked potentials. the time advantage gained by noise attenuation could be lost by the signal amplitude attenuation due tp neural adaptation at high stimulus rates. (c) 2006 Acoustical Society of America.
机译:在这项研究中,使用广义连续环路平均去卷积程序的频域框架,开发了最大长度序列(MLS)cle卷积平均的信噪比(SNR)的通用公式[Ozdamar and Bohorquez,J. co Soc。上午。 119,429-438(2006)]。该公式利用了时域和频域中众所周知的能量等效性(Parseval定理)来表明,在MLS解惊厥中,SNR随刺激瓷砖扫描次数的一半的平方根增加。这种增加小于常规平均的增加,后者是平均扫描次数的平方根。与任意刺激序列不同,后者可以根据频率特性来衰减或放大未锁相的噪声。 MLS去卷积可始终如一地衰减所有频率的噪声。此外,MLS及其零填充变量在所有频率下均表现出最佳的噪声衰减,但它们却呈现出高度抖动的刺激序列。在真实记录的诱发电位中。噪声衰减获得的时间优势可能会由于在高刺激率下的tp神经适应而导致的信号幅度衰减而丧失。 (c)2006年美国声学学会。

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