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mPadal: a joint local-and-global multi-view feature selection method for activity recognition

机译:mPadal:一种用于活动识别的局部和全局多视图联合特征选择方法

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摘要

The selection of multi-view features plays an important role for classifying multi-view data, especially the data with high dimension. In this paper, a novel multi-view feature selection method via joint local patterndiscrimination and global label-relevance analysis (mPadal) is proposed. Different from the previous methods which globally select the multi-view features directly via viewlevel analysis, the proposed mPadal employs a new joint local-and-global way. In the local selection phase, the pattern-discriminative features will be first selected by considering the local neighbor structure of the most discriminative patterns. In the global selection phase, the features with the topmost label-relevance, which can well separate different classes in the current view, are selected. Finally, the two parts selected are combined to form the final features. Experimental results show that compared with several baseline methods in publicly available activity recognition dataset IXMAS, mPadal performs the best in terms of the highest accuracy, precision, recall and F1 score. Moreover, the features selected by mPadal are highly complementary among views for classification, which is able to improve the classification performance according to previous theoretical studies.
机译:多视图特征的选择对于分类多视图数据(尤其是高维数据)起着重要作用。本文提出了一种通过联合局部模式识别和全局标签相关性分析(mPadal)的多视图特征选择方法。与以前的直接通过视图级别分析全局选择多视图特征的方法不同,拟议的mPadal采用了一种新的局部和全局联合方式。在局部选择阶段,将通过考虑最具区分性的图案的局部邻居结构来首先选择图案区分特征。在全局选择阶段,选择标签相关性最高的要素,这些要素可以很好地分隔当前视图中的不同类别。最后,将选定的两个部分合并以形成最终特征。实验结果表明,与公开的活动识别数据集IXMAS中的几种基准方法相比,mPadal在最高的准确性,准确性,召回率和F1得分方面表现最佳。此外,通过mPadal选择的功能在分类视图之间具有高度互补性,这能够根据以前的理论研究提高分类性能。

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