Heart rate is one of the most vital health metrics which can be utilized to investigate and gain intuitions into various human physiological and psychological information. Estimating heart rate without the constraints of contact-based sensors thus presents itself as a very attractive field of research as it enables well-being monitoring in a wider variety of scenarios. Consequently, various techniques for camera-based heart rate estimation have been developed ranging from classical image processing to convoluted deep learning models and architectures. At the heart of such research efforts lies health and visual data acquisition, cleaning, transformation, and annotation. In this paper, we discuss how to prepare data for the task of developing or testing an algorithm or machine learning model for heart rate estimation from images of facial regions. The data prepared is to include camera frames as well as sensor readings from an electrocardiograph sensor. The proposed pipeline is divided into four main steps, namely removal of faulty data, frame and electrocardiograph timestamp de-jittering, signal denoising and filtering, and frame annotation creation. Our main contributions are a novel technique of eliminating jitter from health sensor and camera timestamps and a method to accurately time align both visual frame and electrocardiogram sensor data which is also applicable to other sensor types.
翻译:心率是最重要的健康指标之一,可用于调查和获取人类各种生理和心理信息中的直觉。在没有接触感应器限制的情况下估计心率,因此显示自己是一个非常有吸引力的研究领域,因为它能够在更广泛的各种情景下进行健康监测。因此,已经开发了各种基于相机的心率估计技术,从古典图像处理到复杂深层学习模型和结构等,这些研究的核心在于获取健康和视觉数据、清洁、转换和注释。在本文中,我们讨论如何为开发或测试用于根据面部区域图像估计心率的算法或机器学习模型的任务准备数据。所准备的数据包括相机框架以及电动心电图传感器的感官阅读。拟议管道分为四个主要步骤,即清除错误数据、框架和心电图时针、信号解析和过滤,以及设置说明创建。我们的主要贡献是从健康感应器和摄像仪中消除心电感应和感官感官感测时程的新型技术,它也是用于感官感测时间图的正确调整方法。</s>