Department of Electronic Information Engineering, Xi'an Technological University, Xi'an City, Shaanxi Province, China P.R, 710032.
PLoS One. 2016 Oct 12;11(10):e0164610. doi: 10.1371/journal.pone.0164610. eCollection 2016.
A novel motion retrieval approach based on statistical learning and Bayesian fusion is presented. The approach includes two primary stages. (1) In the learning stage, fuzzy clustering is utilized firstly to get the representative frames of motions, and the gesture features of the motions are extracted to build a motion feature database. Based on the motion feature database and statistical learning, the probability distribution function of different motion classes is obtained. (2) In the motion retrieval stage, the query motion feature is extracted firstly according to stage (1). Similarity measurements are then conducted employing a novel method that combines category-based motion similarity distances with similarity distances based on canonical correlation analysis. The two motion distances are fused using Bayesian estimation, and the retrieval results are ranked according to the fused values. The effectiveness of the proposed method is verified experimentally.
提出了一种基于统计学习和贝叶斯融合的新的运动检索方法。该方法包括两个主要阶段。(1)在学习阶段,首先利用模糊聚类得到运动的代表性帧,并提取运动的手势特征,以建立运动特征数据库。基于运动特征数据库和统计学习,得到不同运动类别的概率分布函数。(2)在运动检索阶段,首先根据阶段(1)提取查询运动特征。然后采用一种新的方法进行相似性度量,该方法结合基于类别和基于典型相关分析的运动相似性距离。利用贝叶斯估计融合两种运动距离,并根据融合值对检索结果进行排序。实验验证了该方法的有效性。