Exploring speed–accuracy tradeoff in reaching movements: a neurocomputational model

被引:0
作者
Antonio Parziale
Rosa Senatore
Angelo Marcelli
机构
[1] DIEM,
[2] University of Salerno,undefined
来源
Neural Computing and Applications | 2020年 / 32卷
关键词
Human movement; Speed–accuracy tradeoff; Fitts’ law; Neurocomputational model;
D O I
暂无
中图分类号
学科分类号
摘要
The tradeoff between speed and accuracy of human movements has been exploited from many different perspectives, such as experimental psychology, workspace design, human–machine interface. This tradeoff is formalized by Fitts’ law, which states a linear relationship between the duration and the difficulty of the movement. The bigger is the required accuracy in reaching a target or farther is the target, the slower has to be the movement. A variety of computational models of neuromusculoskeletal systems have been proposed to pinpoint the neurobiological mechanisms that are involved in human movement. We introduce a neurocomputational model of spinal cord to unveil how the tradeoff between speed and accuracy elicits from the interaction between neural and musculoskeletal systems. Model simulations showed that the speed–accuracy tradeoff is not an intrinsic property of the neuromuscular system, but it is a behavioral trait that emerges from the strategy adopted by the central nervous system for executing faster movements. In particular, results suggest that the velocity of a previous learned movement is regulated by the monosynaptic connection between cortical cells and alpha motoneurons.
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页码:13377 / 13403
页数:26
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