2021
DOI: 10.3390/s21217199
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Research on Joint-Angle Prediction Based on Artificial Neural Network for Above-Knee Amputees

Abstract: In the current study, our research group proposed an asymmetric lower extremity exoskeleton to enable above-knee amputees to walk with a load. Due to the absence of shank and foot, the knee and ankle joint at the amputation side of the exoskeleton lack tracking targets, so it is difficult to realize the function of assisted walking when going up and downstairs. Currently, the use of lower-limb electromyography to predict the angles of lower limb joints has achieved remarkable results. However, the prediction e… Show more

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“…The sEMG and joint angle regression model is established through deep belief networks and back propagation (BP) neural networks [ 18 ]. To further improve the prediction effect, sEMG, joint angles, and plantar pressure signals [ 19 , 20 ] are introduced into the generalized regression neural network for training and prediction. Similarly, sEMG and A-mode ultrasound [ 21 ] have been combined and introduced to build a vector machine regression model.…”
Section: Introductionmentioning
confidence: 99%
“…The sEMG and joint angle regression model is established through deep belief networks and back propagation (BP) neural networks [ 18 ]. To further improve the prediction effect, sEMG, joint angles, and plantar pressure signals [ 19 , 20 ] are introduced into the generalized regression neural network for training and prediction. Similarly, sEMG and A-mode ultrasound [ 21 ] have been combined and introduced to build a vector machine regression model.…”
Section: Introductionmentioning
confidence: 99%