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少样本视觉诱发电位获取研究
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作者 王博新 唐渝 齐颁扬 《中国医疗器械杂志》 CAS 1990年第6期320-326,334,共8页
本文设计了两种从少样本中提取视觉诱发电位的方法。计算机仿真数据实验表明,ARMA—滤波器比最佳线性时变滤波器更优越。最后,我们通过临床研究检验了ARMA—滤波器,结果同样证明,ARMA—滤波器提取视觉诱发电位非常有效。
关键词 视觉诱发电位 arma-滤波器
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oncausal spatial prediction filtering based on an ARMA model 被引量:8
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作者 Liu Zhipeng Chen Xiaohong Li Jingye 《Applied Geophysics》 SCIE CSCD 2009年第2期122-128,共7页
Conventional f-x prediction filtering methods are based on an autoregressive model. The error section is first computed as a source noise but is removed as additive noise to obtain the signal, which results in an assu... Conventional f-x prediction filtering methods are based on an autoregressive model. The error section is first computed as a source noise but is removed as additive noise to obtain the signal, which results in an assumption inconsistency before and after filtering. In this paper, an autoregressive, moving-average model is employed to avoid the model inconsistency. Based on the ARMA model, a noncasual prediction filter is computed and a self-deconvolved projection filter is used for estimating additive noise in order to suppress random noise. The 1-D ARMA model is also extended to the 2-D spatial domain, which is the basis for noncasual spatial prediction filtering for random noise attenuation on 3-D seismic data. Synthetic and field data processing indicate this method can suppress random noise more effectively and preserve the signal simultaneously and does much better than other conventional prediction filtering methods. 展开更多
关键词 AR model ARMA model noncasual random noise self-deconvolved projection filtering
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