You are here:

Research on Key Technology in Remote Education System of Spirit Diagnosing by Eye in TCM
ARTICLE

, , , ,

IJDET Volume 9, Number 1, ISSN 1539-3100 Publisher: IGI Global

Abstract

Spirit diagnosing is an important theory in TCM (Traditional Chinese Medicine), by which a TCM doctor can diagnose a patient's body state. But this theory is complicated and difficult to master simply learned from books. To further the theory and skill of spirit diagnosing, in this paper, the authors propose a remote education system that can accept videos from a user and give the user an auto-diagnosed spirit. The key technology in this system is eye feature computation in spirit diagnosing, for which rules describing "the spirit" (spirit in TCM refers to the human's mental state which reflects the one's general physical condition) state are mined by the quantitative features regarding the human eyes. With videos capturing eye condition during a short period, a set of eye features are extracted. On this basis, attribute intervals of the eye feature space is generated by CAIM (class-attribute interdependence maximization). Several of the candidate rules are then mined by the association rule based on the cloud model. Finally, three complementary rule-pruning methods are modified and combined to trim the candidate rules. The cross validation test for mined rules has an average accuracy of 93%, which shows the high performance of the proposed method. (Contains 2 tables and 2 figures.)

Citation

Guo, F., Li, S., Dai, Y., Zhou, C. & Lin, Y. (2011). Research on Key Technology in Remote Education System of Spirit Diagnosing by Eye in TCM. International Journal of Distance Education Technologies, 9(1), 101-113. IGI Global. Retrieved November 18, 2019 from .

This record was imported from ERIC on April 19, 2013. [Original Record]

ERIC is sponsored by the Institute of Education Sciences (IES) of the U.S. Department of Education.

Copyright for this record is held by the content creator. For more details see ERIC's copyright policy.

Keywords