发明名称 Personalized studying path generating method in serious game
摘要 The present invention relates to a personalized studying path generating method in a serious game. The personalized studying path generating method in the serious game according to the present invention comprises (a) generating serious criteria on a learning ability based on study elements required for the serious game and a relation between the study elements; (b) projecting user information and target information onto the serious criteria; (c) simplifying first criteria which the user information is projected onto and second criteria which the target information is projected onto by reducing a dimension of the first criteria and the second criteria; (d) comparing the simplified first and second criteria; (e) generating a personalized optimum studying path from the first to the second criteria; and (f) studying according to the optimum studying path. Accordingly, the present invention sets a personalized studying path by evaluating user's learning ability according to a standard and enables a user to play the game according to his/her ability to thereby improve study efficiency. Also, the present invention may minimize difference of study efficiency arising from different study inclination and circumstances between individuals.
申请公布号 US9443443(B2) 申请公布日期 2016.09.13
申请号 US200912591999 申请日期 2009.12.07
申请人 FOUNDATION OF SOONGSIL UNIVERSITY-INDUSTRY COOPERATION 发明人 Ko Ilju;Sung Bokyung;Kim Jungsoo;Park Junhyoung;Kwun Jinman
分类号 G09B7/00;G09B3/00;G09B7/06 主分类号 G09B7/00
代理机构 Kile Park Reed & Houtteman PLLC 代理人 Kile Park Reed & Houtteman PLLC
主权项 1. A computer program product comprising a non-transitory computer-readable medium, wherein the non-transitory computer-readable medium comprises code that, when executed by a computer, causes the computer to perform: (a) generating multidimensional serious criteria on a learning ability based on study elements required for a serious game and a relation between the study elements; (b) generating multidimensional target criteria by projecting target information onto the multidimensional serious criteria; (c) generating multidimensional user criteria by projecting user information onto the multidimensional serious criteria; (d) generating a two-dimensional (2D) target map displayed in a computer graphic area by transforming the multidimensional target criteria to lower dimensions; (e) generating a 2D user map displayed in the computer graphic area by transforming the multidimensional user criteria to lower dimensions; (f) comparing the 2D target map and the 2D user map by: determining locations of characteristic points in the 2D target map and in the 2D user map; measuring an amount and a direction of changed energy from each of the locations of the characteristic points in the 2D target map and from each of the locations of the characteristic points in the 2D user map by calculating a difference value between pixels of the 2D target map and a difference value between pixels of the 2D user map; and determining similarity points between the 2D target map and the 2D user map based on the measuring; (g) generating a personalized optimum studying path by generating one or more intermediate paths displayed in the computer graphic area between the 2D user map and the 2D target map, wherein the one or more intermediate paths are generated by performing a shape transformation algorithm based on the 2D user map, the 2D target map, and the similarity points; (h) providing training data corresponding to data from the one or more intermediate paths according to the personalized optimum studying path; (i) generating study result data in each of the one or more intermediate paths and cumulative study result data by accumulating the study result data in each of the one or more intermediate paths; (j) updating the user information based on the cumulative study result data if the cumulative study result data are out of a critical value; and (k) projecting the updated user information onto the multidimensional serious criteria, and then updating the personalized optimum studying path by re-performing the operations (c) and (e) to (g) and automatically re-performing the operations (h) and (i) according to the updated personalized optimum studying path until when the cumulative study result data are within the critical value, wherein a processor executes the shape transformation algorithm stored in a memory associated with the processor.
地址 Seoul KR