Martínez-Villaseñor Lourdes, Ponce Hiram, Brieva Jorge, Moya-Albor Ernesto, Núñez-Martínez José, Peñafort-Asturiano Carlos
Facultad de Ingeniería, Universidad Panamericana, Augusto Rodin 498, México, Ciudad de México 03920, Mexico.
Sensors (Basel). 2019 Apr 28;19(9):1988. doi: 10.3390/s19091988.
Falls, especially in elderly persons, are an important health problem worldwide. Reliable fall detection systems can mitigate negative consequences of falls. Among the important challenges and issues reported in literature is the difficulty of fair comparison between fall detection systems and machine learning techniques for detection. In this paper, we present UP-Fall Detection Dataset. The dataset comprises raw and feature sets retrieved from 17 healthy young individuals without any impairment that performed 11 activities and falls, with three attempts each. The dataset also summarizes more than 850 GB of information from wearable sensors, ambient sensors and vision devices. Two experimental use cases were shown. The aim of our dataset is to help human activity recognition and machine learning research communities to fairly compare their fall detection solutions. It also provides many experimental possibilities for the signal recognition, vision, and machine learning community.
跌倒,尤其是老年人的跌倒,是全球范围内一个重要的健康问题。可靠的跌倒检测系统可以减轻跌倒带来的负面影响。文献中报道的重要挑战和问题之一是跌倒检测系统与用于检测的机器学习技术之间难以进行公平比较。在本文中,我们展示了UP跌倒检测数据集。该数据集包含从17名无任何损伤的健康年轻人中检索到的原始集和特征集,这些年轻人进行了11项活动和跌倒,每项活动和跌倒均进行了三次尝试。该数据集还汇总了来自可穿戴传感器、环境传感器和视觉设备的超过850GB的信息。展示了两个实验用例。我们数据集的目的是帮助人类活动识别和机器学习研究社区公平地比较他们的跌倒检测解决方案。它还为信号识别、视觉和机器学习社区提供了许多实验可能性。