Prediction of Joint angle from Muscle Activities decoded from Electrocorticograms in Primary Motor Cortex
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概要
- 論文の詳細を見る
Electrocorticography (ECoG) has drawn attention as an effective recording approach for less invasive brain-machine interfaces (BMI). Previous studies succeeded in classifying the movement direction and predicting hand trajectories from ECoGs. Despite such successful studies, there still remain considerable works for the purpose of realizing an ECoG-based BMI robot. We developed a method to predict multiple muscle activities from ECoG measurements. We also verified that ECoG signals could be effective for predicting muscle activities in time varying series for preforming sequential movements. Each ECoG signal was filtered by different bandpass filters for sensorimotor rhythms, normalized by the standard z-score, and smoothed by a Gaussian filter. We used sparse linear regression to find the best fit between frequency bands of ECoG and electromyogram (EMG). We also predicted angle of 4 DOF robot arm from the decoded EMG using 3-layer neural network. Consequently, this study shows that it could derive online prediction of angle of robot arm from ECoG signals.
- 2012-11-09
著者
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Isa Tadashi
National Institute For Physiological Sciences National Institute For Natural Sciences
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Koike Yasuharu
Precision And Intelligen Laboratory Tokyo Institute Of Technology
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Shin Duk
Toyota Central R&d Laboratories Inc.
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Koike Yasuharu
Precision and Intelligence Laboratory, Tokyo Institute of Technology
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WATANABE Hidenori
National Institute for Physiological Sciences, National Institute of Natural Science
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KAMBARA Hiroyuki
Precision and Intelligence Laboratory, Tokyo Institute of Technology
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SHIN Duk
Precision and Intelligence Laboratory, Tokyo Institute of Technology
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NAKANISHI Yasuhiko
Precision and Intelligence Laboratory, Tokyo Institute of Technology
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YOSHIMURA Natsue
Precision and Intelligence Laboratory, Tokyo Institute of Technology
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NAMBU Atsushi
National Institute for Physiological Sciences, National Institutes of Natural Sciences
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NISHIMURA Yukio
National Institute for Physiological Sciences, National Institute of Natural Science
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NAMBU Atsushi
National Institute for Physiological Sciences, National Institute of Natural Science
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- Prediction of Joint angle from Muscle Activities decoded from Electrocorticograms in Primary Motor Cortex
- Prediction of Joint angle from Muscle Activities decoded from Electrocorticograms in Primary Motor Cortex