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Deep learning with time-frequency representation for pulse estimation from facial videos

机译:带有时频表示的深度学习用于从面部视频估计脉冲

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Accurate pulse estimation is of pivotal importance in acquiring the critical physical conditions of human subjects under test, and facial video based pulse estimation approaches recently gained attention owing to their simplicity. In this work, we have endeavored to develop a novel deep learning approach as the core part for pulse (heart rate) estimation by using a common RGB camera. Our approach consists of four steps. We first begin by detecting the face and its landmarks, and thereby locate the required facial ROI. In Step 2, we extract the sample mean sequences of the R, G, and B channels from the facial ROI, and explore three processing schemes for noise removal and signal enhancement. In Step 3, the Short-Time Fourier Transform (STFT) is employed to build the 2D Time-Frequency Representations (TFRs) of the sequences. The 2D TFR enables the formulation of the pulse estimation as an image-based classification problem, which can be solved in Step 4 by a deep Con-volutional Neural Network (CNN). Our approach is one of the pioneering works for attempting real-time pulse estimation using a deep learning framework. We have developed a pulse database, called the Pulse from Face (PFF), and used it to train the CNN. The PFF database will be made publicly available to advance related research. When compared to state-of-the-art pulse estimation approaches on the standard MAHNOB-HCI database, the proposed approach has exhibited superior performance.
机译:准确的脉冲估计对于获取被测人的关键身体状况至关重要,最近基于面部视频的脉冲估计方法由于其简单性而备受关注。在这项工作中,我们努力开发一种新颖的深度学习方法,作为使用普通RGB相机进行脉搏(心率)估计的核心部分。我们的方法包括四个步骤。我们首先从检测面部及其地标开始,然后找到所需的面部ROI。在第2步中,我们从面部ROI提取R,G和B通道的样本均值序列,并探讨了三种用于去除噪声和增强信号的处理方案。在步骤3中,采用短时傅立叶变换(STFT)来构建序列的2D时频表示(TFR)。 2D TFR支持将脉冲估算公式化为基于图像的分类问题,可以在第4步中通过深度卷积神经网络(CNN)解决该问题。我们的方法是尝试使用深度学习框架进行实时脉冲估计的开创性工作之一。我们已经开发了一个脉冲数据库,称为面部脉冲(PFF),并用它来训练CNN。 PFF数据库将公开可用以推进相关研究。当与标准MAHNOB-HCI数据库上的最新脉冲估计方法进行比较时,所提出的方法表现出卓越的性能。

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