MHAD:包含多角度视频和同步生理信号的多模态家庭活动数据集

Lei Yu, Jintao Fei, Xinyi Liu, Yang Yao, Jun Zhao, Guoxin Wang, Xin Li
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引用次数: 0

摘要

以视频为基础的生理学,如远程照相血压计(rPPG),通过分析视频记录中的细微变化来提取脉搏和呼吸等生理信号。这种非接触式实时监测方法在家庭环境中具有巨大潜力。现有的数据集通常仅限于特写、静态、正面记录,而且通常只包括 1-2 个生理信号。为了在真实的家庭环境中推进基于视频的生理学研究,我们引入了 MHAD 数据集。该数据集由 40 名受试者的 1440 段视频组成,从 3 个角度捕捉了真实家庭环境中的 6 种典型活动。此外,还记录了 5 种生理信号,使其成为一个全面的基于视频的生理学数据集。MHAD 与 rPPG 工具箱兼容,并使用多种无监督和有监督方法进行了验证。我们的数据集可在https://github.com/jdh-algo/MHAD-Dataset。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MHAD: Multimodal Home Activity Dataset with Multi-Angle Videos and Synchronized Physiological Signals
Video-based physiology, exemplified by remote photoplethysmography (rPPG), extracts physiological signals such as pulse and respiration by analyzing subtle changes in video recordings. This non-contact, real-time monitoring method holds great potential for home settings. Despite the valuable contributions of public benchmark datasets to this technology, there is currently no dataset specifically designed for passive home monitoring. Existing datasets are often limited to close-up, static, frontal recordings and typically include only 1-2 physiological signals. To advance video-based physiology in real home settings, we introduce the MHAD dataset. It comprises 1,440 videos from 40 subjects, capturing 6 typical activities from 3 angles in a real home environment. Additionally, 5 physiological signals were recorded, making it a comprehensive video-based physiology dataset. MHAD is compatible with the rPPG-toolbox and has been validated using several unsupervised and supervised methods. Our dataset is publicly available at https://github.com/jdh-algo/MHAD-Dataset.
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