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Poster Paper: An Accurate Crowdsourcing-Based Adaptive Fall Detection Approach Using Smart Devices

机译:海报纸:使用智能设备的准确覆盖的自适应坠落检测方法

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A low-cost but high-accuracy mechanism for detecting falls is critical for many health and safety applications, including caring for the elderly. Existing approaches are unduly expensive and sensitive to user physique and biometrics. Additionally, most approaches were developed using limited, simulated fall data and often perform poorly in field tests. To resolve these issues, in this paper we propose an accurate, crowdsourcing-based, adaptive fall detection approach using smart devices with built in wireless connection and sensors. We adaptively refine the fall detection algorithm and user groupings for improved accuracy based on the real, crowdsourced data. Field tests show that our proposed approach improves fall detection accuracy rate to 97%, compared to 68% with other traditional approaches.
机译:用于检测下降的低成本但高精度机制对于许多健康和安全应用,包括为老年人提供关怀。现有方法对用户体质和生物识别技术过于昂贵和敏感。此外,大多数方法是使用有限的,模拟秋季数据开发的,并且经常在现场测试中执行不良。为了解决这些问题,在本文中,我们提出了一种使用内置无线连接和传感器内置的智能设备准确,基于众包的自适应崩溃检测方法。我们自适应地改进了秋季检测算法和用户分组,以提高基于实际众包数据的精度。现场测试表明,我们提出的方法将跌落检测精度率提高至97%,而其他传统方法则为68%。

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