一种新的半周期信号峰值识别算法

S. A. Al-Otaibi, L. Cheded
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引用次数: 0

摘要

在本文中,我们提出了一种新的通用算法,用于半周期信号的峰值识别。半周期信号是在一些实际应用中出现的一类重要的有用信号。本文将阐述该算法背后的关键思想。进行了广泛的仿真研究,以测试所提出算法的性能。我们性能分析的测试平台是一个实际应用,涉及从孕妇记录的心电图信号,包括识别母亲和胎儿的心跳信号。我们提出的算法取得了很好的效果。受此优异性能的鼓舞,我们还提出了该算法的增强版本,可以扩展到非半周期信号,并将作为我们未来工作的一部分进行测试。
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A Novel Algorithm for Peak Identification in Semi-periodic Signals
In this paper, we propose a novel and general algorithm for peak identification in semi-periodic signals which form an important class of useful signals occurring in several practical applications. The key ideas behind the proposed algorithm will be expounded in the paper. An extensive simulation study was carried out to test the performance of the proposed algorithm. The test bed for our performance analysis was a practical application involving ECG signals recorded from pregnant women, and consisting of identifying the heartbeat signals of both the mother and the fetus. Our proposed algorithm showed excellent results. Encouraged by this excellent performance, we also propose an enhanced version of this algorithm that can be extended to non semi-periodic signals and which will be tested as part of our future work.
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