Health metrics from wrist-worn devices demand an automatic dominant hand prediction to keep an accurate operation. The prediction would improve reliability, enhance the consumer experience, and encourage further development of healthcare applications. This paper aims to evaluate the use of physiological and spatiotemporal context information from a two-hand experiment to predict the wrist placement of a commercial smartwatch. The main contribution is a methodology to obtain an effective model and features from low sample rate physiological sensors and a self-reported context survey. Results show an effective dominant hand prediction using data from a single subject under real-life conditions.
翻译:手腕式装置的卫生测量仪要求用自动主导式手势预测来保持准确的操作。预测将提高可靠性,增加消费者经验,并鼓励进一步发展医疗应用。本文旨在评估使用来自两手实验的生理和时空背景信息,以预测商业智能观察手腕的位置。主要贡献是利用低取样率生理感应器和自报背景调查获得有效模型和特征的方法。结果显示,利用现实条件下单个主体的数据,对有效主导式手势进行了有效的预测。