Signal detection and discrimination for medical devices using windowed state space filters

R. Wildhaber, Nour Zalmai, M. Jacomet, Hans-Andrea Loeliger
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引用次数: 3

Abstract

We introduce a model-based approach for computationally efficient signal detection and discrimination, which is relevant for biological signals. Due to its low computational complexity and low memory need, this approach is well-suited for low power designs, as required for medical devices and implants. We use linear state space models to gain recursive, efficient computation rules and obtain the model parameters by minimizing the squared error on discrete-time observations. Furthermore we combine multiple models of different time-scales to match superpositions of signals of variable length. To give immediate access to our method, we highlight the use in several practical examples on standard and on esophageal ECG signals. This method was adapted and improved as part of a research and development project for medical devices.
基于窗态空间滤波器的医疗设备信号检测与识别
我们介绍了一种基于模型的方法,用于计算高效的信号检测和识别,这与生物信号有关。由于其低计算复杂度和低内存需求,这种方法非常适合低功耗设计,如医疗设备和植入物所需要的。我们使用线性状态空间模型来获得递归、高效的计算规则,并通过最小化离散时间观测值的平方误差来获得模型参数。此外,我们结合多个不同时间尺度的模型来匹配变长度信号的叠加。为了让大家立即了解我们的方法,我们强调了在标准和食道心电图信号的几个实际例子中的应用。作为医疗设备研发项目的一部分,对该方法进行了调整和改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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