Respiratory rate monitoring by maximum likelihood video processing

D. Alinovi, G. Ferrari, F. Pisani, R. Raheli
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引用次数: 9

Abstract

A novel video processing-based method for remote estimation of the respiratory rate (RR) is proposed. Relying on the fact that breathing involves quasi-periodic movements, this technique employs a generalized model of pixel-wise periodicity and applies a maximum likelihood (ML) criterion. The system first selects suitable regions of interest (ROI) mainly affected by respiratory movements. The obtained ROI are jointly analyzed for the estimation of the fundamental frequency, which is strictly related to the RR of the patient. A large motion detection algorithm is also applied, in order to exclude, from RR estimation, ROI possibly affected by unrelated large movements. The RRs estimated by the proposed system are compared with those extracted by a pneumograph and a previously proposed video processing algorithm. The results, albeit preliminary, show a good agreement with the pneumograph and a clear improvement over the previously proposed algorithm.
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基于最大似然视频处理的呼吸率监测
提出了一种基于视频处理的呼吸速率远程估计方法。基于呼吸涉及准周期性运动的事实,该技术采用了逐像素周期性的广义模型,并应用了最大似然(ML)标准。该系统首先选择受呼吸运动影响的感兴趣区域(ROI)。对获得的ROI进行联合分析,以估计基频,基频与患者的RR严格相关。为了从RR估计中排除可能受到不相关的大运动影响的ROI,还应用了大运动检测算法。将该系统估计的RRs与由气图和先前提出的视频处理算法提取的RRs进行比较。结果,虽然是初步的,但显示了与气图的良好一致,并且比先前提出的算法有了明显的改进。
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