Previous studies have shown that the motion intention recognition for lower limb prosthesis mainly focused on the identification of performed gait. However, the bionic prosthesis needs to know the next movement at the beginning of a new gait, especially in complex operation environments. In this paper, an upcoming locomotion prediction scheme via multilevel classifier fusion was proposed for the complex operation. At first, two motion states, including steady state and transient state, were defined. Steady-state recognition was backtracking of a completed gait, which would be used as prior knowledge of motion prediction. In steady-state recognition, surface electromyographic (sEMG) and inertial sensors were fused to improve recognition accu...
Recognizing locomotion modes is a crucial step in controlling lower-limb exoskeletons/orthoses. Our ...
Surface electromyogram (sEMG), an electrical signal generated from muscles, has been used for a long...
Accurately measuring and predicting human movement is important in many contexts, such as in rehabil...
Previous studies have shown that the motion intention recognition for lower limb prosthesis mainly f...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
Locomotion intent prediction is essential for the control of powered lower-limb prostheses to realiz...
Intelligent lower-limb prosthesis appears in the public view due to its attractive and potential fun...
The interaction between human and exoskeletons increasingly relies on the precise decoding of human ...
People walk on different terrains daily, for instance, level-ground walking, ramp and stair ascent ...
People walk on different types of terrain daily; for instance, level-ground walking, ramp and stair ...
Recent development in lower limb prosthetics has seen an emergence of powered prosthesis that have t...
Powered prostheses are effective for helping amputees walk on level ground, but these devices are in...
Algorithms for locomotion mode recognition (LMR) based on surface electromyography and mechanical se...
The purpose of this dissertation is to develop a continuous predictive model of gait that incorporat...
Understanding how to seamlessly adapt the assistance of lower-limb wearable assistive devices (activ...
Recognizing locomotion modes is a crucial step in controlling lower-limb exoskeletons/orthoses. Our ...
Surface electromyogram (sEMG), an electrical signal generated from muscles, has been used for a long...
Accurately measuring and predicting human movement is important in many contexts, such as in rehabil...
Previous studies have shown that the motion intention recognition for lower limb prosthesis mainly f...
Current state-of-the-art locomotion mode classifiers for controlling robotic lower-limb prostheses r...
Locomotion intent prediction is essential for the control of powered lower-limb prostheses to realiz...
Intelligent lower-limb prosthesis appears in the public view due to its attractive and potential fun...
The interaction between human and exoskeletons increasingly relies on the precise decoding of human ...
People walk on different terrains daily, for instance, level-ground walking, ramp and stair ascent ...
People walk on different types of terrain daily; for instance, level-ground walking, ramp and stair ...
Recent development in lower limb prosthetics has seen an emergence of powered prosthesis that have t...
Powered prostheses are effective for helping amputees walk on level ground, but these devices are in...
Algorithms for locomotion mode recognition (LMR) based on surface electromyography and mechanical se...
The purpose of this dissertation is to develop a continuous predictive model of gait that incorporat...
Understanding how to seamlessly adapt the assistance of lower-limb wearable assistive devices (activ...
Recognizing locomotion modes is a crucial step in controlling lower-limb exoskeletons/orthoses. Our ...
Surface electromyogram (sEMG), an electrical signal generated from muscles, has been used for a long...
Accurately measuring and predicting human movement is important in many contexts, such as in rehabil...