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Activity Recognition in Still Images with Transductive Non-negative Matrix Factorization

机译:具有转导非负矩阵分解的静止图像中的活动识别

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Still image based activity recognition is a challenging problem due to changes in appearance of persons, articulation in poses, cluttered backgrounds, and absence of temporal features. In this paper, we proposed a novel method to recognize activities from still images based on transductive non-negative matrix factorization (TNMF). TNMF clusters the visual descriptors of each human action in the training images into fixed number of groups meanwhile learns to represent the visual descriptor of test image on the concatenated bases. Since TNMF learns these bases on both training images and test image simultaneously, it learns a more discriminative representation than standard NMF based methods. We developed a multiplicative update rule to solve TNMF and proved its convergence. Experimental results on both laboratory and real-world datasets demonstrate that TNMF consistently outperforms NMF.
机译:基于形象的活动识别是由于人类出现的变化,姿势,杂乱的背景,杂乱背景和缺乏时间特征的变化,这是一个具有挑战性的问题。在本文中,我们提出了一种基于转导非负矩阵分解(TNMF)从静止图像识别活动的新方法。 TNMF将训练图像中的每个人类行动的视觉描述符集群与固定数量的组相同,同时表示代表级联基座上的测试图像的视觉描述符。由于TNMF同时在训练图像和测试图像上学习这些基础,因此它学习比标准的NMF基于NMF的方法更辨别的表示。我们开发了一个乘法更新规则来解决TNMF并证明其融合。实验室和真实世界数据集的实验结果表明,TNMF始终如一地优于NMF。

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