Delis et al., 2013 - Google Patents
Quantitative evaluation of muscle synergy models: a single-trial task decoding approachDelis et al., 2013
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- 4520424684985525482
- Author
- Delis I
- Berret B
- Pozzo T
- Panzeri S
- Publication year
- Publication venue
- Frontiers in computational neuroscience
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Snippet
Muscle synergies, ie, invariant coordinated activations of groups of muscles, have been proposed as building blocks that the central nervous system (CNS) uses to construct the patterns of muscle activity utilized for executing movements. Several efficient dimensionality …
- 210000003205 Muscles 0 title abstract description 145
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- A—HUMAN NECESSITIES
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