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Comparison of feature-level and kernel-level data fusion methods in multi-sensory fall detection

机译:多传感器跌倒检测中特征级和内核级数据融合方法的比较

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In this work, we studied the problem of fall detection using signals from tri-axial wearable sensors. In particular, we focused on the comparison of methods to combine signals from multiple tri-axial accelerometers which were attached to different body parts in order to recognize human activities. To improve the detection rate while maintaining a low false alarm rate, previous studies developed detection algorithms by cascading base algorithms and experimented on each sensory data separately. Rather than combining base algorithms, we explored the combination of multiple data sources. Based on the hypothesis that these sensor signals should provide complementary information to the characterization of human's physical activities, we benchmarked a feature level and a kernel-level fusions to learn the kernel that incorporates multiple sensors in the support vector classifier. The results show that given the same false alarm rate constraint, the detection rate improves when using signals from multiple sensors, compared to the baseline where no fusion was employed.
机译:在这项工作中,我们研究了使用来自三轴可穿戴传感器的信号进行跌倒检测的问题。尤其是,我们专注于将来自多个三轴加速度计的信号进行组合的方法的比较,这些三轴加速度计连接到人体的不同部位,以识别人类活动。为了在保持较低的误报率的同时提高检测率,先前的研究通过级联基本算法开发了检测算法,并分别对每个感官数据进行了实验。我们没有组合基本算法,而是探索了多个数据源的组合。基于这些传感器信号应为人类身体活动的表征提供补充信息的假设,我们对功能级别和内核级别的融合进行了基准测试,以了解在支持向量分类器中结合了多个传感器的内核。结果表明,与未采用融合的基准相比,在相同的误报率约束条件下,使用来自多个传感器的信号时,检测率会提高。

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