School of Artificial Intelligence, Beijing Normal University, Beijing 100875, China.
Engineering Research Center of Intelligent Technology and Educational Application, Ministry of Education, Beijing 100875, China.
Sensors (Basel). 2020 Aug 12;20(16):4512. doi: 10.3390/s20164512.
In the military, police, security companies, and shooting sports, precision shooting training is of the outmost importance. In order to achieve high shooting accuracy, a lot of training is needed. As a result, trainees use a large number of cartridges and a considerable amount of time of professional trainers, which can cost a lot. Our motivation is to reduce costs and shorten training time by introducing an augmented biofeedback system based on machine learning techniques. We are designing a system that can detect and provide feedback on three types of errors that regularly occur during a precision shooting practice: excessive hand movement error, aiming error and triggering error. The system is designed to provide concurrent feedback on the hand movement error and terminal feedback on the other two errors. Machine learning techniques are used innovatively to identify hand movement errors; the other two errors are identified by the threshold approach. To correct the excessive hand movement error, a precision shot accuracy prediction model based on Random Forest has proven to be the most suitable. The experimental results show that: (1) the proposed Random Forest (RF) model achieves the prediction accuracy of 91.27%, higher than any of the other reference models, and (2) hand movement is strongly related to the accuracy of precision shooting. Appropriate use of the proposed augmented biofeedback system will result in a lower number of rounds used and shorten the precision shooting training process.
在军事、警察、安保公司和射击运动领域,精确射击训练至关重要。为了实现高精度射击,需要进行大量的训练。因此,学员需要使用大量的弹药和相当数量的专业培训师的时间,这可能会花费很多。我们的动机是通过引入基于机器学习技术的增强生物反馈系统来降低成本并缩短训练时间。我们正在设计一种可以检测和反馈三种常见射击错误的系统:过度手部运动误差、瞄准误差和触发误差。该系统旨在为手部运动误差提供同步反馈,并为其他两个误差提供终端反馈。我们创新性地使用机器学习技术来识别手部运动误差;其他两个误差则通过阈值方法进行识别。为了纠正过度手部运动误差,基于随机森林的精确射击精度预测模型被证明是最合适的。实验结果表明:(1)所提出的随机森林(RF)模型达到了 91.27%的预测精度,高于任何其他参考模型;(2)手部运动与精确射击的准确性密切相关。适当使用所提出的增强生物反馈系统将减少所需的弹药数量并缩短精确射击训练过程。