Domain adaptation methods have been proposed to reduce the training efforts needed to control an upper-limb prosthesis by adapting well performing models from previous subjects to the new subject. These studies generally reported impressive reductions in the required number of training samples to achieve a certain level of accuracy for intact subjects. We further investigate two popular methods in this field to verify whether this result also applies to amputees. Our findings show instead that this improvement can largely be attributed to a suboptimal hyperparameter configuration. When hyperparameters are appropriately tuned, the standard approach that does not exploit prior information performs on par with the more complicated transfer learning algorithms. Additionally, earlier studies erroneously assumed that the number of training samples relates proportionally to the efforts required from the subject. However, a repetition of a movement is the atomic unit for subjects and the total number of repetitions should therefore be used as reliable measure for training efforts. Also when correcting for this mistake, we do not find any performance increase due to the use of prior models.

Adaptive learning to speed-up control of prosthetic hands: A few things everybody should know / Gregori, Valentina; Gijsberts, Arjan; Caputo, Barbara. - ELETTRONICO. - (2017), pp. 1130-1135. (Intervento presentato al convegno 2017 International Conference on Rehabilitation Robotics, ICORR 2017 tenutosi a London; United Kingdom nel 18/07/2017) [10.1109/ICORR.2017.8009401].

Adaptive learning to speed-up control of prosthetic hands: A few things everybody should know

Valentina Gregori
;
Arjan Gijsberts
;
Barbara Caputo
2017

Abstract

Domain adaptation methods have been proposed to reduce the training efforts needed to control an upper-limb prosthesis by adapting well performing models from previous subjects to the new subject. These studies generally reported impressive reductions in the required number of training samples to achieve a certain level of accuracy for intact subjects. We further investigate two popular methods in this field to verify whether this result also applies to amputees. Our findings show instead that this improvement can largely be attributed to a suboptimal hyperparameter configuration. When hyperparameters are appropriately tuned, the standard approach that does not exploit prior information performs on par with the more complicated transfer learning algorithms. Additionally, earlier studies erroneously assumed that the number of training samples relates proportionally to the efforts required from the subject. However, a repetition of a movement is the atomic unit for subjects and the total number of repetitions should therefore be used as reliable measure for training efforts. Also when correcting for this mistake, we do not find any performance increase due to the use of prior models.
2017
2017 International Conference on Rehabilitation Robotics, ICORR 2017
Artificial limbs; Learning algorithms; Robotics; Sampling
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Adaptive learning to speed-up control of prosthetic hands: A few things everybody should know / Gregori, Valentina; Gijsberts, Arjan; Caputo, Barbara. - ELETTRONICO. - (2017), pp. 1130-1135. (Intervento presentato al convegno 2017 International Conference on Rehabilitation Robotics, ICORR 2017 tenutosi a London; United Kingdom nel 18/07/2017) [10.1109/ICORR.2017.8009401].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1015604
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