Motion Matching in Rehabilitation Databases With Force and Position Information

This paper deals with a motion matching method for rehabilitation database. To improve identification performance, force information was utilized in addition to position information. Using dynamic programming (DP), matching that features force and position information recorded by a rehabilitation robot enables similar motion data to be searched. Several experimental evaluations validate that identification performance is improved with force information.

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