使用FMG信号识别手握的深度学习技术

U. Zakia, Xianta Jiang, C. Menon
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引用次数: 6

摘要

抓取物体是人类日常活动中常见的现象。力肌图(FMG)信号是一种非侵入性技术,可以在人类参与者抓住不同物体时记录肌肉运动,并使用机器学习(ML)算法进行分类。本文提出了一种流行的手部抓握识别深度学习技术。采用一种新颖的卷积神经网络(CNN)架构,通过肌力图学习抓取。12名参与者在惯用手的前臂上戴着FMG带,进行了6次手抓握。训练数据集包括单手抓取不同形状和大小的小物体,或者用各种手臂姿势的手指包裹或挤压。所提出的基于fmg的CNN模型获得了96%的交叉试验分类准确率(总体平均值),与其他ML技术相当。通过迁移学习对Alexnet(使用ImageNet数据集)进行预训练,对抓手进行分类比较。该模型在验证精度、损失和训练时间方面优于预训练的Alexnet。对于未来基于fmg的实际应用,使用该模型进行迁移学习将是有利的,因为相对较小的数据集是训练目的所需的。
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Deep Learning Technique in Recognizing Hand Grasps using FMG signals
Grasping objects are common phenomenon in daily human activities. Force myography (FMG) signal, a noninvasive technique can record muscle movements while a human participant grasps different objects and be categorized using machine learning (ML) algorithms. In this paper, a popular deep learning technique is presented for hand grasp recognition. A novel convolutional neural network (CNN) architecture was implemented in learning grasps via force myography. Twelve participants wearing an FMG band on dominant hand's forearm performed six hand grasps. Training dataset consisted of one-handed grasping small objects of different shapes and sizes either wrapping or pinching with fingers with a variety of arm poses. The proposed FMG-based CNN model obtained cross-trial classification accuracy of 96% (population mean) and was found comparable with other ML techniques. Pretranined Alexnet (with ImageNet dataset) through transfer learning was implemented to classify the hand grasps for comparison. The proposed model outperformed the pretrained Alexnet in terms of validation accuracy, loss, and training time. For future FMG-based practical applications, it would be advantageous to use the model for transfer learning where comparatively smaller datasets are desirable for training purpose.
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