IEEE Trans Neural Syst Rehabil Eng. 2019 Apr;27(4):724-732. doi: 10.1109/TNSRE.2019.2905658. Epub 2019 Mar 18.
This paper presents a new approach to wearable hand gesture recognition and finger angle estimation based on the modified barometric pressure sensing. Barometric pressure sensors were encased and injected with VytaFlex rubber such that the rubber directly contacted the sensing element allowing pressure change detection when the encasing rubber was pressed. A wearable prototype consisting of an array of ten modified barometric pressure sensors around the wrist was developed and validated with experimental testing for three different hand gesture sets and finger flexion/extension trials for each of the five fingers. The overall hand gesture recognition classification accuracy was 94%. Further analysis revealed that the most important sensor location was the underside of the wrist and that when reducing the sensor number to only five optimally placed sensors, classification accuracy was still 90%. For continuous finger angle estimation, aggregate R values between actual and predicted angles were thumb: 0.81 ± 0.10, index finger: 0.85±0.06, middle finger: 0.77±0.08, ring finger: 0.77 ± 0.12, and pinkie finger: 0.75 ± 0.10, and the overall average was 0.79 ± 0.05. These results demonstrate that a modified barometric pressure wristband can be used to classify hand gestures and to estimate individual finger joint angles. This approach could serve to improve the clinical treatment for upper extremity deficiencies, such as for stroke rehabilitation, by providing objective patient motor control metrics to inform and aid physicians and therapists throughout the rehabilitation process.
本文提出了一种新的基于改良气压传感的可穿戴手势识别和手指角度估计方法。气压传感器被封装并注入 VytaFlex 橡胶,使得当封装的橡胶被按压时,橡胶直接接触感应元件,从而可以检测到压力变化。开发了一个由十个改良气压传感器组成的腕部阵列的可穿戴原型,并通过对三组不同手势集和每根手指的弯曲/伸展试验进行了实验验证。总体手势识别分类准确率为 94%。进一步的分析表明,最重要的传感器位置是手腕的底部,并且当将传感器数量减少到只有五个最佳位置的传感器时,分类准确率仍为 90%。对于连续的手指角度估计,实际角度和预测角度之间的总 R 值为拇指:0.81 ± 0.10,食指:0.85±0.06,中指:0.77±0.08,无名指:0.77 ± 0.12,小指:0.75 ± 0.10,总体平均值为 0.79 ± 0.05。这些结果表明,改良气压腕带可用于分类手势并估计单个手指关节角度。这种方法可以通过提供客观的患者运动控制指标来改善上肢缺陷的临床治疗,例如中风康复,为医生和治疗师提供信息并帮助他们完成整个康复过程。