论文标题
基于非接触电容感应的运动手势识别的实时接口控制
Real-time Interface Control with Motion Gesture Recognition based on Non-contact Capacitive Sensing
论文作者
论文摘要
电容感传感是一项杰出的技术,与现有的传感系统相比,具有成本效益和低功率消耗速度的低功耗。由于这些优势,在触摸感应,定位,存在检测和接触传感界面应用(例如人类计算机的相互作用)中,广泛研究和商业化了电容传感。但是,由于非接触近接近感测方案很容易受到外围物体或周围环境的干扰影响,因此与接触感应相比,它需要相当多的敏感数据处理,从而限制了其进一步利用的使用。在本文中,我们提出了一个实时接口控制框架,该框架通过处理原始信号,基于非接触手动运动手势识别,通过使用自适应阈值在电容传感器附近触发的电场扰动,并使用自适应阈值触发了电场干扰,并使用显着的信号框架,并提取了具有98.8%fintection速率和98.4%的频率范围。通过用提取的信号框架训练的GRU模型,我们将10个手运动类型分类为98.79%的精度。该框架通过分类结果传输分类结果,并根据输入操作前景过程的接口。这项研究表明,直观界面技术的可行性可容纳类似于自然用户界面的人与机器之间的灵活相互作用,并基于通过非接触式接近感测量的电场扰动来提高商业化的可能性,这是最新的传感技术。
Capacitive sensing is a prominent technology that is cost-effective and low power consuming with fast recognition speed compared to existing sensing systems. On account of these advantages, Capacitive sensing has been widely studied and commercialized in the domains of touch sensing, localization, existence detection, and contact sensing interface application such as human-computer interaction. However, as a non-contact proximity sensing scheme is easily affected by the disturbance of peripheral objects or surroundings, it requires considerable sensitive data processing than contact sensing, limiting the use of its further utilization. In this paper, we propose a real-time interface control framework based on non-contact hand motion gesture recognition through processing the raw signals, detecting the electric field disturbance triggered by the hand gesture movements near the capacitive sensor using adaptive threshold, and extracting the significant signal frame, covering the authentic signal intervals with 98.8% detection rate and 98.4% frame correction rate. Through the GRU model trained with the extracted signal frame, we classify the 10 hand motion gesture types with 98.79% accuracy. The framework transmits the classification result and maneuvers the interface of the foreground process depending on the input. This study suggests the feasibility of intuitive interface technology, which accommodates the flexible interaction between human to machine similar to Natural User Interface, and uplifts the possibility of commercialization based on measuring the electric field disturbance through non-contact proximity sensing which is state-of-the-art sensing technology.