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Unsupervised approximate-semantic vocabulary learning for human action and video classification

机译:用于人类动作和视频分类的无监督近似语义词汇学习

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摘要

The paper presents a novel unsupervised contextual spectral (CSE) framework for human action and video classification. Similar to textual words, the visual word (a mid-level semantic) representation of an image or video contains a combination of synonymous words which give rise to the ambiguity of the representation. To narrow the semantic gap between visual words (mid-level semantic representation) and high-level semantics, we propose a high level representation called approximate-semantic descriptor. The experimental results show that the proposed approach for visual words disambiguation could improve the subsequent classification performance. In the paper, the approximate-semantic descriptor learning is formulated as a spectral clustering problem, such that semantically associated visual words are placed closely in low-dimensional semantic space and then clustered into one approximate-semantic descriptor. Specifically, the high level representation of human action videos is learnt by capturing the inter-video context of mid-level semantics via a non-parametric correlation measure. Experiments on four standard datasets demonstrate that our approach can achieve significantly improved results with respect to the state of the art, particularly for unconstrained environments.
机译:本文提出了一种用于人类行为和视频分类的新型无监督语境频谱(CSE)框架。与文本单词相似,图像或视频的视觉单词(中等语义)表示包含同义词的组合,这些单词引起了表示的歧义。为了缩小视觉单词(中级语义表示)和高级语义之间的语义鸿沟,我们提出了一种称为近似语义描述符的高级表示。实验结果表明,所提出的视觉词消歧方法可以提高后续的分类性能。在本文中,将近似语义描述符学习公式化为一个光谱聚类问题,从而将语义相关的视觉词紧密放置在低维语义空间中,然后聚类为一个近似语义描述符。具体地,通过经由非参数相关性度量捕获中间语义的视频间上下文来学习人类动作视频的高级表示。在四个标准数据集上进行的实验表明,相对于现有技术,尤其是在不受限制的环境下,我们的方法可以显着改善结果。

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