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首页> 外文期刊>International Journal of Monitoring and Surveillance Technologies Research >The MobiFall Dataset: Fall Detection and Classification with a Smartphone
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The MobiFall Dataset: Fall Detection and Classification with a Smartphone

机译:MobiFall数据集:智能手机的跌倒检测和分类

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摘要

Fall detection is receiving significant attention in the field of preventive medicine, wellness management and assisted living, especially for the elderly. As a result, several fall detection systems are reported in the research literature or exist as commercial systems. Most of them use accelerometers and/ or gyroscopes attached on a person's body as the primary signal sources. These systems use either discrete sensors as part of a product designed specifically for this task or sensors that are embedded in mobile devices such as smartphones. The latter approach has the advantage of offering well tested and widely available communication services, e.g. for calling emergency when necessary. Nevertheless, automatic fall detection continues to present significant challenges, with the recognition of the type of fall being the most critical. The aim of this work is to introduce a human fall and activity dataset to be used in testing new detection methods, as well as performing objective comparisons between different reported algorithms for fall detection and activity recognition, based on inertial-sensor data from smartphones. The dataset contains signals recorded from the accelerometer and gyroscope sensors of a latest technology smartphone for four different types of falls and nine different activities of daily living. Utilizing this dataset, the results of an elaborate evaluation of machine learning-based fall detection and fall classification are presented and discussed in detail.
机译:跌倒检测在预防医学,健康管理和辅助生活领域受到了广泛关注,特别是对于老年人。结果,在研究文献中报道了几种跌倒检测系统或作为商业系统存在。它们中的大多数将附着在人身上的加速度计和/或陀螺仪用作主要信号源。这些系统使用离散传感器作为专门为此任务设计的产品的一部分,或者使用嵌入在智能手机等移动设备中的传感器。后一种方法的优点是提供了经过良好测试和广泛使用的通信服务,例如必要时拨打紧急电话。尽管如此,自动跌倒检测仍然面临着巨大挑战,其中跌倒类型的识别最为关键。这项工作的目的是介绍一个人类跌倒和活动数据集,该数据集将用于测试新的检测方法,并基于来自智能手机的惯性传感器数据,对报告的不同跌倒检测和活动识别算法进行客观比较。数据集包含从最新技术智能手机的加速度计和陀螺仪传感器记录的信号,用于四种不同类型的瀑布和九种不同的日常生活活动。利用该数据集,详细介绍了基于机器学习的跌倒检测和跌倒分类的评估结果。

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