Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:4744-4748. doi: 10.1109/EMBC46164.2021.9630177.
Recognising and classifying human hand gestures is important for effective communication between humans and machines in applications such as human-robot interaction, human to robot skill transfer, and control of prosthetic devices. Although there are already many interfaces that enable decoding of the intention and action of humans, they are either bulky or they rely on techniques that need careful positioning of the sensors, causing inconvenience when the system needs to be used in real-life scenarios and environments. Moreover, electromyography (EMG), which is the most commonly used technique, captures EMG signals that have a nonlinear relationship with the human intention and motion. In this work, we present lightmyography (LMG) a new muscle machine interfacing method for decoding human intention and motion. Lightmyography utilizes light propagation through elastic media and the change of light luminosity to detect silicone deformation. Lightmyography is similar to forcemyography in the sense that they both record muscular contractions through skin displacements. In order to experimentally validate the efficiency of the proposed method, we designed an interface consisting of five LMG sensors to perform gesture classification experiments. Using this device, we were able to accurately detect a series of different hand postures and gestures. We also compared LMG data with processed EMG data.
识别和分类人类手势对于在人机交互、人机技能转移和假肢控制等应用中实现人类与机器之间的有效通信非常重要。尽管已经有许多接口可以解码人类的意图和动作,但它们要么体积庞大,要么依赖于需要仔细定位传感器的技术,因此在需要在实际场景和环境中使用系统时会带来不便。此外,肌电图(EMG)是最常用的技术,它捕捉到与人类意图和运动具有非线性关系的 EMG 信号。在这项工作中,我们提出了光肌电图(LMG),这是一种用于解码人类意图和运动的新型肌肉机器接口方法。光肌电图利用光通过弹性介质的传播和光亮度的变化来检测硅酮变形。光肌电图与力肌电图相似,它们都通过皮肤位移记录肌肉收缩。为了实验验证所提出方法的效率,我们设计了一个由五个 LMG 传感器组成的接口来进行手势分类实验。使用该设备,我们能够准确地检测一系列不同的手势和姿势。我们还将 LMG 数据与处理后的 EMG 数据进行了比较。