Charleston S, Azimi-Sadjadi M R
Department of Electrical Engineering, Universidad Autonoma Metropolitana, Mexico City.
IEEE Trans Biomed Eng. 1996 Apr;43(4):421-4. doi: 10.1109/10.486262.
In the processing and analysis of respiratory sounds, heart sounds present the main source of interference. This paper is concerned with the problem of cancellation of the heart sounds using a reduced-order Kalman filter (ROKF). To facilitate the estimation of the respiratory sounds, an autoregressive (AR) model is fitted to heart signal information present in the segments of the acquired signal which are free of respiratory sounds. The state-space equations necessary for the ROKF are then established considering the respiratory sound as a colored additive process in the observation equation. This scheme does not require a time alignment procedure as with the adaptive filtering-based schemes. The scheme is applied to several synthesized signals with different signal-to-interference ratios (SIR) and the results are presented.
在呼吸音的处理和分析中,心音是主要的干扰源。本文关注使用降阶卡尔曼滤波器(ROKF)消除心音的问题。为便于估计呼吸音,对采集信号中不含呼吸音的片段所呈现的心脏信号信息拟合一个自回归(AR)模型。然后在观测方程中将呼吸音视为有色加性过程,建立ROKF所需的状态空间方程。该方案不像基于自适应滤波的方案那样需要时间对齐程序。该方案应用于具有不同信干比(SIR)的几个合成信号,并给出了结果。