Human activity recognition has become an attractive research area with the development of on-body wearable sensing technology. With comfortable electronic-textiles, sensors can be embedded into clothing so that it is possible to record human movement outside the laboratory for long periods. However, a long-standing issue is how to deal with motion artefacts introduced by movement of clothing with respect to the body. Surprisingly, recent empirical findings suggest that cloth-attached sensor can actually achieve higher accuracy of activity recognition than rigid-attached sensor, particularly when predicting from short time-windows. In this work, a probabilistic model is introduced in which this improved accuracy and resposiveness is explained by the increased statistical distance between movements recorded via fabric sensing. The predictions of the model are verified in simulated and real human motion capture experiments, where it is evident that this counterintuitive effect is closely captured.
翻译:人类活动认识随着身体上可磨损的遥感技术的发展,已成为一个有吸引力的研究领域。有了舒适的电子纺织技术,传感器可以嵌入衣服,从而可以记录人类在实验室外长时期的移动情况。然而,一个长期的问题是如何处理服装移动给人体带来的运动用具。令人惊讶的是,最近的实证调查结果表明,穿衣服的传感器实际上可以比紧凑的传感器更精确地识别活动,特别是在从短时间窗口预测时。在这项工作中,引入一种概率模型,通过织物感测记录的活动之间的统计距离增加,可以解释这种提高的准确性和再生性。模型的预测在模拟和真实的人类运动捕捉摸实验中得到验证,很明显,这种反直觉效应被密切捕捉到。