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Personalized Rehabilitation Recognition Model upon ANFIS

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Academic year: 2020

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Figure

Fig. 1 Prepared instrument and exercises for the personalized rehabilitation recognition
Fig. 2 Machine learning flowchart of ANFIS for recognizing the rehabilitation exercise
Fig. 3 Example of data transform between time and frequency domains for the features of the shoulder exercise
Fig. 4 The inference diagrams of the test data versus the sampling schedule

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