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首页> 外文期刊>Physiological measurement >Self-adaptive signal separation for non-contact heart rate estimation from facial video in realistic environments
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Self-adaptive signal separation for non-contact heart rate estimation from facial video in realistic environments

机译:从实际环境中面部视频的非接触心率估计自适应信号分离

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Objective: Recent research indicates that facial epidermis color varies with the rhythm of heat beats. It can be captured by consumer-level cameras and, astonishingly, be adopted to estimate heart rate (HR). The HR estimated remains not as precise as required in a practical environment where illumination interference, facial expressions, or motion artifacts are involved, although numerous methods have been proposed in the last few years. A novel algorithm is proposed to make noncontact HR estimation technique more robust. Approach: First, the face of the subject is detected and tracked to follow the head movement. The facial region then falls into several blocks, and the chrominance feature of each block is extracted to establish a raw HR sub-signal. Self-adaptive signal separation is performed to separate the noiseless HR sub-signals from raw sub-signals. On that basis, the noiseless sub-signals full of HR information are selected using a weight-based scheme to establish the holistic HR signal, from which the average HR is computed adopting wavelet transform and data filtering. Main results: Forty subjects took part in our experiments, whose facial videos were recorded by a normal webcam with the frame rate of 30 fps under ambient lighting conditions. The average HR estimated by our method correlates strongly with ground truth measurements, as indicated in experimental results measured in a static scenario with the Pearson correlation r = 0.980 and a dynamic scenario with the Pearson correlation r = 0.897. In addition, our method, compared to the newest method, decreases the error rate by 38.63% and increases the Pearson correlation by 15.59%. Significance: This work proposes a robust method for non-contact HR measurement in a realistic environment. Results of comparative experiments indicate that our method out-performs state-ofthe- art non-contact HR estimation methods in realistic environments.
机译:目的:最近的研究表明,面部表皮颜色随着热节律而变化。它可以被消费者级相机捕获,并且令人惊讶地被采用来估算心率(HR)。估计的HR在涉及照明干扰,面部表情或运动伪影的实际环境中仍然不如需要,尽管在过去几年中提出了许多方法。提出了一种新颖的算法使非接触式HR估计技术更加强大。方法:首先,检测和跟踪对象的面部以遵循头部运动。然后,面部区域落入几个块,提取每个块的色度特征以建立原始的HR子信号。执行自适应信号分离以将来自原始子信号分离的无噪声HR子信号。在此基础上,使用基于权重的方案来选择充满HR信息的无噪声子信号,以建立整体HR信号,从中计算采用小波变换和数据滤波的平均HR。主要结果:40个科目参与了我们的实验,其面部视频被正常网络摄像头记录,在环境照明条件下,帧速率为30 FPS。通过我们的方法估计的平均HR与地面真理测量强烈地相关,如在具有Pearson相关r = 0.980的静态场景中测量的实验结果中所示,并且具有Pearson相关性R = 0.897的动态场景。此外,我们的方法与最新方法相比,将误差率降低了38.63%,并将Pearson相关性增加了15.59%。意义:这项工作提出了一种在现实环境中的非接触式HR测量的稳健方法。比较实验的结果表明,我们的方法在现实环境中出现了最先进的非联系人估计方法。

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