National high-tech Development Plan (No.2007AA01Z334);National Natural Science Foundation of China (No.61272219, No.61100110, No.61321491);Program for New Century Excellent Talents in University of Ministry of Education of China (No.NCET-04-0460);Jiangsu Science and Technology Program (No.BE2010072, No.BE2011058, No.BY2012190, No.BY2013072-04);Key Innovative Program of State Key Laboratory for Novel Software Technology (No.ZZKT2013A12)
CHEN Song-le, SUN Zheng-xing, ZHANG Yan, et al. A Relevance Feedback Algorithm for Motion Data Retrieval[J]. Acta Electronica Sinica, 2016, 44(4): 868-872.
DOI:
CHEN Song-le, SUN Zheng-xing, ZHANG Yan, et al. A Relevance Feedback Algorithm for Motion Data Retrieval[J]. Acta Electronica Sinica, 2016, 44(4): 868-872. DOI: 10.3969/j.issn.0372-2112.2016.04.016.
A Relevance Feedback Algorithm for Motion Data Retrieval
A relevance feedback algorithm based on RankBoost for content-based motion data retrieval (CBMR) is presented and has two characteristics.First
KNN-DTW is employed as the weak ranker for RankBoost ensemble learning.While adapting to variable-length multivariate time series (VLMTS) data
by taking the advantage of the ensemble and efficiency of RankBoost
it can resolve the conflict between the real-time requirement of relevance feedback and the high computational complexity of VLMTS data.Second
minimizing ranking experience loss and generalization loss risk proposed in this paper are used as the learning objective for RankBoost ensemble learning
which can effectively solve the over-fitting problem caused by small-sample training in relevance feedback.Experimental results on CMU action library verify the effectiveness of the proposed algorithm.