This paper proposes a framework for human action recognition based on procrustes analysis and Fisher vector coding(FVC).Firstly,we applied a pose feature extracted from silhouette image by employing Procrustes analysi...This paper proposes a framework for human action recognition based on procrustes analysis and Fisher vector coding(FVC).Firstly,we applied a pose feature extracted from silhouette image by employing Procrustes analysis and local preserving projection(LPP).Secondly,the extracted feature can preserve the discriminative shape information and local manifold structure of human pose and is invariant to translation,rotation and scaling.Finally,after the pose feature was extracted,a recognition framework based on FVC and multi-class supporting vector machine was employed to classify the human action.Experimental results on benchmarks demonstrate the effectiveness of the proposed method.展开更多
基金National Natural Science Foundation of China(No.61602148)Natural Science Foundation of Fujian Province,China(No.2016J01040)Xiamen University of Technology High Level Talents Project,China(No.YKJ15018R)
文摘This paper proposes a framework for human action recognition based on procrustes analysis and Fisher vector coding(FVC).Firstly,we applied a pose feature extracted from silhouette image by employing Procrustes analysis and local preserving projection(LPP).Secondly,the extracted feature can preserve the discriminative shape information and local manifold structure of human pose and is invariant to translation,rotation and scaling.Finally,after the pose feature was extracted,a recognition framework based on FVC and multi-class supporting vector machine was employed to classify the human action.Experimental results on benchmarks demonstrate the effectiveness of the proposed method.
文摘针对原始局部保持投影(LPP:Local Preserving Projection)算法难以准确获取非均匀高维数据的局部流形结构且未利用样本类别信息的缺陷,提出一种多信息融合的局部保持投影算法(MIF-LPP:Multi-Information Fusion Local Preserving Projection)。该算法使用改进后的标准欧氏距离获取样本的近邻和互邻信息,降低了样本点分布不均和不同维度数据量纲差异的影响。通过融合样本的类别信息构造权值矩阵,进而获得数据的低维本质流形。最后,分别在CWRU(Case Western Reserve University)数据集和本实验室轴承数据集上验证该算法的有效性。实验结果表明,MIF-LPP算法的特征提取性能明显优于其他算法,并且对邻域值具有鲁棒性。