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Sensor fusion in upper limb area networks: A survey

机译:上肢区域网络中的传感器融合:一项调查

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Body sensor networks (BSNs) have been increasingly used in medical applications such as exoskeleton control, powered prosthesis control, tremor suppression, gesture and sign language recognition systems, and human computer interfaces. This review explores the use of multi-modal sensor fusion in BSNs for the detection, measurement and classification of upper limb for the control of dynamic systems. Specifically, the review will look into the most common multi-modal sensor combinations found in literature, namely inertial measurement units (IMUs) with electromyography (EMG), IMUs with camera systems, EMG with electroencephalography (EEG), and IMUs with flexible force sensors. The advantages and challenges associated with these sensor combinations is discussed, as well as the challenges of sensor fusion in a broad nature, with particular focus on the use of data, feature, or decision level fusion.
机译:身体传感器网络(BSN)已越来越多地用于医疗应用,例如外骨骼控制,动力假体控制,震颤抑制,手势和手语识别系统以及人机界面。这篇综述探讨了在BSN中使用多模式传感器融合来检测,测量和分类上肢,以控制动态系统。具体而言,本综述将研究文献中最常见的多模式传感器组合,即带有肌电图(EMG)的惯性测量单元(IMU),带有摄像系统的IMU,带有脑电图(EEG)的EMG和带有柔性力传感器的IMU。 。讨论了与这些传感器组合相关的优点和挑战,以及广泛意义上的传感器融合的挑战,尤其着重于数据,特征或决策级融合的使用。

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