Challenges in Data Acquisition Systems: Lessons Learned from Fall Detection to Nanosensors*

Carlos Peñafort-Asturiano, Néstor Santiago, José Núñez-Martínez, Hiram Ponce, Lourdes Martínez-Villaseñor
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引用次数: 7

Abstract

Falls are a major public health problem in elderly people often causing fatal injuries. It is important to assure that injured people receive assistance as quick as possible. Fall detection systems have gain more relevance nowadays. As more databases and fall detection systems are developed, there is more need to identify the challenges encountered in building and creating them. This paper addresses pre-processing, inconsistency and synchronization challenges that occur when creating a multimodal database for fall detection. We present different algorithms used to tackle these issues. We describe the issues and the corresponding solutions in order to document the lessons learned that could help others in data acquisition for multimodal databases. Applying the solutions to the issues found so far, we acquired an organized multimodal database for fall detection with 17 subjects. Furthermore, these lessons learned can be applied for data nanosensors acquisition and storage.
数据采集系统的挑战:从跌倒检测到纳米传感器的经验教训*
跌倒是老年人的一个主要公共卫生问题,经常造成致命伤害。重要的是要确保受伤的人尽快得到援助。如今,跌落检测系统的应用越来越广泛。随着越来越多的数据库和跌落检测系统的开发,更需要确定在构建和创建它们时遇到的挑战。本文解决了在创建用于跌倒检测的多模态数据库时出现的预处理、不一致和同步挑战。我们提出了用于解决这些问题的不同算法。我们描述了问题和相应的解决方案,以便记录所吸取的经验教训,可以帮助其他人获取多模式数据库的数据。应用目前发现的问题的解决方案,我们获得了一个有组织的多模式数据库,用于17个受试者的跌倒检测。此外,这些经验教训可以应用于数据纳米传感器的采集和存储。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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