.. 5. Ovo-/-mdrm-na-na-41 and .. Csp-ova-/-mdrm-na-na-41-method, 203 xv 45, 202 D.4 Confusion matrices obtained by the OsM approach for subject 3 during an online setup0±15.7% NA CSP OVA 42.5±15.5% 41.6±15.9% NA ACSP OVO 47.0±16.4% 41.1±15.9% NA ACSP OVA 43.6±16.7% 43.9±15.1% NA FBCSP OVO 47.1±16.0% 45.8±16.1% NA FBCSP OVA 40.4±16.3% 38.7±15.9% NA FBACSP OVO 44.2±15.3% 37.6±15.5% NA FBACSP OVA 36.8±15.2% 37.1±14.5±15.3% HM CSP /right 43.5±16.6% 41.9±15.0% NA HM ACSP /right 45.0±16.2% 41.1±16.0% NA HM FBCSP /right 40.3±15.9% 37.8±15.4% NA HM FBACSP Robotic Arm Control Contents C.1 Results, p.160

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