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Noncontact Heartbeat Detection by Viterbi Algorithm with Fusion of Beat-Beat Interval and Deep Learning-Driven Branch Metrics

机译:Viterbi算法与击败区间间隔和深度学习驱动的分支指标的Viterbi算法不接触心跳检测

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Heartbeat is one of essential vital signs to assess our health condition. Noncontact heartbeat detection is thus receiving a lot of attention in recent years, which motivates many researchers to investigate heartbeat detection via a Doppler radar. In this paper, to detect heartbeat with a high accuracy, we propose a Doppler radar-based heartbeat detection method by the Viterbi algorithm with a fusion of Beat-Beat Interval (BBI) and deep learning-driven Branch Metrics (BM). The Viterbi algorithm is a technique to estimate a sequence with maximum likelihood by using a pre-defined metric, namely, a BM. In the proposed method, we combine two BMs defined based on (i) a difference between two adjacent BBIs and (ii) an output probability of a deep learning model that judges whether a peak is caused by heartbeat or not. We apply the VIterbi algorithm with the fusion of the two BMs to the signal obtained by some signal processing. We experimentally confirmed that our method performed heartbeat detection with small Root Mean Squared Error (RMSE) between the estimated and actual BBIs.
机译:心跳是评估我们健康状况的基本生命体征之一。近年来,非接触心跳检测因此接受了很多关注,这激励了许多研究人员通过多普勒雷达调查心跳检测。在本文中,为了以高精度检测心跳,我们通过Viterbi算法提出了一种基于多普勒雷达的心跳检测方法,具有节拍间隔(BBI)和深度学习驱动的分支度量(BM)的融合。 Viterbi算法是一种通过使用预定义的度量来估计具有最大可能性的序列的技术,即BM。在所提出的方法中,我们组合基于(i)两个相邻BBI和(ii)在判断峰是否由心跳引起的深度学习模型的输出概率的差异。我们将ViTerbi算法应用于两个BMS的融合到通过一些信号处理获得的信号。我们通过实验证实,我们的方法在估计和实际BBI之间使用了小的根均方误差(RMSE)进行了心跳检测。

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