TU Tao, SU Ye-hao, SU Chong, et al. Development and application of computer vision-based acupuncture manipulation classification system[J]. Acupuncture research, 2021, 46(6): 469-473.
DOI:
TU Tao, SU Ye-hao, SU Chong, et al. Development and application of computer vision-based acupuncture manipulation classification system[J]. Acupuncture research, 2021, 46(6): 469-473. DOI: 10.13702/j.1000-0607.20210154.
Development and application of computer vision-based acupuncture manipulation classification system
Objective To improve the accuracy of acupuncture manipulation modeling and inheritance
this article explores the feasibility of automatically classifying "twirling" and "lifting and thrusting"
two basic acupuncture manipulations in science of acupuncture and moxibustion
with the computer vision technology. Methods A hybrid deep learning network model was designed based on 3 D convolutional neural network and long-short term memory neural network to extract the spatial-temporal features of video frame sequences
which were then input into the classifier for classification. Results The model discriminated between "twirling" and "lifting and thrusting" manipulations in 200 videos
with the training and verification accuracy reaching up to 95.4% and 95.3%
respectively. Conclusion This computer vision-based acupuncture manipulation classification system provides an effective way for the data extraction and inheritance of acupuncture manipulations.