利用手腕上的惯性传感器探索对称和不对称双臂进食检测。

Edison Thomaz, Abdelkareem Bedri, Temiloluwa Prioleau, Irfan Essa, Gregory D Abowd
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引用次数: 0

摘要

在健康应用的推动下,使用现成设备进行进食检测一直是一个活跃的研究领域。一种常见的方法是使用安装在手腕上的惯性传感器识别个人进食手势并建立模型。尽管取得了可喜的成果,但这种方法也有局限性,因为它要求将传感设备佩戴在做出进食手势的手上,而这在实践中是无法保证的。我们对 14 名参与者进行了一项研究,比较了用(1)双手、(2)只用惯用手和(3)只用非惯用手的腕式设备记录手势数据时的进食检测性能,结果证明,在对数据进行 L1 或 L2 归一化处理时,除了进食手势外,更多的手臂和手部运动模式也能预测进食活动。我们的研究结果得到了非对称双臂动作理论的支持,并为自动饮食监测领域做出了贡献。特别是,它为在现实环境中使用消费类可穿戴设备识别进食活动指明了新的方向。
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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Exploring Symmetric and Asymmetric Bimanual Eating Detection with Inertial Sensors on the Wrist.

Motivated by health applications, eating detection with off-the-shelf devices has been an active area of research. A common approach has been to recognize and model individual intake gestures with wrist-mounted inertial sensors. Despite promising results, this approach is limiting as it requires the sensing device to be worn on the hand performing the intake gesture, which cannot be guaranteed in practice. Through a study with 14 participants comparing eating detection performance when gestural data is recorded with a wrist-mounted device on (1) both hands, (2) only the dominant hand, and (3) only the non-dominant hand, we provide evidence that a larger set of arm and hand movement patterns beyond food intake gestures are predictive of eating activities when L1 or L2 normalization is applied to the data. Our results are supported by the theory of asymmetric bimanual action and contribute to the field of automated dietary monitoring. In particular, it shines light on a new direction for eating activity recognition with consumer wearables in realistic settings.

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