2016
DOI: 10.1007/s40593-016-0103-2
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Training the Body: The Potential of AIED to Support Personalized Motor Skills Learning

Abstract: This paper argues that the research field of Artificial Intelligence in Education (AIED) can benefit from integrating recent technological advances (e.g., wearable devices, big data processing, 3D modelling, 3D printing, ambient intelligence) and design methodologies, such as TORMES, when developing systems that address the psychomotor learning domain. In particular, the acquisition of motor skills could benefit from individualized instruction and support just as cognitive skills learning has over the last dec… Show more

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Cited by 64 publications
(31 citation statements)
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“…A key aspect of this objective is supporting one-to-one tutoring for individuals learning psychomotor tasks that are assessed by measures such as speed, accuracy, balance, and coordination (Simpson 1972). In exploring the artificial intelligence in education (AIED) literature, Santos (2016) posed the challenges of modeling psychomotor interaction and providing personalized support for psychomotor tasks that ranged from sports to surgical procedures to sign language. Since the AIED literature addressing tutoring of psychomotor tasks is lagging with respect to cognitive domains, we suggest that the development and validation of measures, expert models, and adaptive support for psychomotor tasks could benefit from tools and processes in the GIFT testbed.…”
Section: Gift As a Testbed For Developing And Evaluating Tutors For Pmentioning
confidence: 99%
“…A key aspect of this objective is supporting one-to-one tutoring for individuals learning psychomotor tasks that are assessed by measures such as speed, accuracy, balance, and coordination (Simpson 1972). In exploring the artificial intelligence in education (AIED) literature, Santos (2016) posed the challenges of modeling psychomotor interaction and providing personalized support for psychomotor tasks that ranged from sports to surgical procedures to sign language. Since the AIED literature addressing tutoring of psychomotor tasks is lagging with respect to cognitive domains, we suggest that the development and validation of measures, expert models, and adaptive support for psychomotor tasks could benefit from tools and processes in the GIFT testbed.…”
Section: Gift As a Testbed For Developing And Evaluating Tutors For Pmentioning
confidence: 99%
“…A. U. Alahakone et al [4] put forward the method of gait research and rehabilitation, and achieved the effect of scientific gait training by using inertial sensor technology to identify toe-off and landing on the heel when exercising on a treadmill. In the research of virtual reality technology in physical education [5][6][7], Lin Zhang et al [8] and Xu Lanjun [9] discussed the application of sports simulation technology and tactics in basketball teaching practice and volleyball teaching, respectively; In the field of campus sports simulation, Liu Heng et al [10] focused on how to stimulate students' independent learning. In the research of Markov process on sport competitive prediction and teaching prediction, Yonggan Wang [11] predicted and analyzed the basketball competition results, while Liu Yaxin studied the application of Markov process on teaching evaluation.…”
Section: Literature Reviewmentioning
confidence: 99%
“…In a previous work [9], seventeen systems that supported motor skills learning have been reviewed. Those six [16][17][18][19][20][21] that provide vibrotactile feedback are compiled in Table 1, analyzing the information that is monitored (sensors used, processing approach, measures computed), how it is compared to detect errors (user, movement and context data used to diagnose errors) and what correction support (actuators used, feedback trigger and delivery) is provided.…”
Section: Vibrotactile Feedback In Motor Skills Training Systemsmentioning
confidence: 99%
“…Systems for learning motor skills require that the physical actions carried out by the user when acquiring enactive knowledge are monitored, compared and, when needed, corrected [9]. Thus, there exists an interesting research path to develop personalized motion learning systems that provide vibrotactile feedback in the psychomotor learning domain (i.e., the learning domain dealing with motor skills learning).…”
Section: A Proposal For Personalized Vibrotactile Feedback To Supportmentioning
confidence: 99%
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