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Gesture Classification with Low-Cost Capacitive Sensor Array for Upper Extremity Rehabilitation

机译:带有低成本电容传感器阵列的手势分类,用于上肢康复

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Machine Learning and artificial intelligence play major roles in understanding human activity through various classification and regression tasks. However, for many lowresource devices, high computation cost resulting from the construction of AI models may limit their applications. To that end, this work explores gesture recognition through a low-cost capacitive sensor matrix overlayed on a rehabilitation activity table. For gesture recognition, a convolutional long short-term memory (C-LSTM) neural network structure is applied and hyper-parameters are varied to determine what resources are necessary to perform classification tasks. The 8 X 8 mutual capacitive sensor array (CSA) is constructed with low-cost copper adhesive. The designed capacitive sensors capture hand motions performed by patients during rehabilitative exercise. The motions cause changes in the electric field that is quantified through sampling the changing capacitance between the copper tape electrodes. An MSP430 MCU computes the capacitance-todigital conversion at a 50 Hz sampling rate. To identify low computation cost models for the C-LSTM neural network, we evaluate different numbers of capacitor sensors, kernels, convolutional layers, and hidden nodes. Six subjects performed 1200 gestures, and the accuracy metrics are calculated using fivefold cross-validation.
机译:通过各种分类和回归任务,机器学习和人工智能在了解人类活动方面发挥着重要作用。然而,对于许多Lowresource设备,由AI模型的构造产生的高计算成本可能会限制其应用。为此,这项工作通过低成本的电容传感器矩阵探讨了覆盖在康复活动表上的姿态识别。对于手势识别,应用了卷积的长短期存储器(C-LSTM)神经网络结构,并且改变超参数以确定执行分类任务所需的资源。 8×8互电容传感器阵列(CSA)采用低成本铜粘合剂构建。设计的电容传感器在康复运动中捕获患者进行的手动运动。动作导致电场的变化通过采样铜带电极之间的改变电容来定量。 MSP430 MCU以50 Hz采样率计算电容签发转换。为了识别C-LSTM神经网络的低计算成本模型,我们评估了不同数量的电容器传感器,内核,卷积层和隐藏节点。六个受试者执行了1200个手势,并且使用五倍交叉验证计算精度度量。

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