Numerous real-world applications have been driven by the recent algorithmic advancement of artificial intelligence (AI). Healthcare is no exception and AI technologies have great potential to revolutionize the industry. Non-contact camera-based physiological sensing, including remote photoplethysmography (rPPG), is a set of imaging methods that leverages ordinary RGB cameras (e.g., webcam or smartphone camera) to capture subtle changes in electromagnetic radiation (e.g., light) reflected by the body caused by physiological processes. Because of the relative ubiquity of cameras, these methods not only have the ability to measure the signals without contact with the body but also have the opportunity to capture multimodal information (e.g., facial expressions, activities and other context) from the same sensor. However, developing accessible, equitable and useful camera-based physiological sensing systems comes with various challenges. In this article, we identify four research challenges for the field of camera-based physiological sensing and broader AI driven healthcare communities and suggest future directions to tackle these. We believe solving these challenges will help deliver accurate, equitable and generalizable AI systems for healthcare that are practical in real-world and clinical contexts.
翻译:最近人工智能的算法进步推动了无数实际应用(AI)。保健并不是例外,AI技术具有革命工业的巨大潜力。非接触照相机的生理感测,包括远程光谱成像仪(rPPG),是一套成像方法,利用普通RGB照相机(例如网络摄像或智能手机照相机)来捕捉身体生理过程所反应的电磁辐射(例如光)的微妙变化。由于相机相对普遍,这些方法不仅能够测量信号而不与身体接触,而且还有机会从同一传感器获取多式信息(例如面部表达、活动和其他环境)。然而,开发无障碍、公平和有用的摄影机的生理感测系统会遇到各种挑战。在文章中,我们确定了基于摄影机的生理感测领域和更广泛的由AI驱动的保健社区所面临的四项研究挑战,并提出应对这些挑战的未来方向。我们认为,解决这些挑战将有助于为现实和临床环境中的实际保健提供准确、公平和通用的AI系统。