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Transfer Discriminant-Analysis of Canonical Correlations for View-Transfer Action Recognition

机译:转移判别分析典型相关鉴定动作识别

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A novel transfer learning approach, referred to as Transfer Discriminant-Analysis of Canonical Correlations (Transfer DCC), is proposed to recognize human actions from one view (target view) via the discriminative model learned from another view (source view). To cope with the considerable change between feature distributions of source view and target view, Transfer DCC includes an effective nonparametric criterion in the discriminative function to minimize the mismatch between data distributions of these two views. We utilize the canonical correlation between the means of samples from source view and target view to measure the data distribution distance between the two views. Consequently, Transfer DCC learns an optimal projection matrix by simultaneously maximizing the canonical correlation of mean samples from source view and target view, maximizing the canonical correlations of within-class samples and minimizing the canonical correlations of between-class samples. Moreover, we propose a Weighted Canonical Correlations scheme to fuse the multi-class canonical correlations from multiple source views according to their corresponding weights for recognition in the target view. Experiments on the IXMAS multi-view dataset demonstrate the effectiveness of our method.
机译:一种新的转印学习方法,称为典型相关的转移判别式分析(传输DCC),提出了通过从另一视图(源视图)学到的判别模型来识别从一个视图(目标视图)人的行动。为了应对源视图和目标视图的特征分布之间的相当大的变化,传输DCC包括在所述判别函数的有效非参数准则最小化的这两种观点的数据分布之间的失配。我们利用从源视图,以测量两个视图之间的数据分发距离目标视图样本的装置之间的典型相关。因此,传输DCC获悉通过同时最大化平均样本从源视图和目标视图的典型相关,最大化类内的样品的典型相关和最小化类间样品的典型相关的最佳投影矩阵。此外,我们提出了一个加权典型相关方案根据用于识别在目标视图及其对应的权重,从多个源视图融合多级典型相关。在IXMAS多视图数据集的实验证明我们的方法的有效性。

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