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Feature Similarity and Frequency-Based Weighted Visual Words Codebook Learning Scheme for Human Action Recognition

机译:基于特征相似度和基于频率的加权视觉单词码本学习方案的人类动作识别

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Human action recognition has become a popular field for computer vision researchers in the recent decade. This paper presents a human action recognition scheme based on a textual information concept inspired by document retrieval systems. Videos are represented using a commonly used local feature representation. In addition, we formulate a new weighted class specific dictionary learning scheme to reflect the importance of visual words for a particular action class. Weighted class specific dictionary learning enriches the scheme to learn a sparse representation for a particular action class. To evaluate our scheme on realistic and complex scenarios, we have tested it on UCF Sports and UCF11 benchmark datasets. This paper reports experimental results that outperform recent state-of-the-art methods for the UCF Sports and the UCF11 dataset i.e. 98.93% and 93.88% in terms of average accuracy respectively. To the best of our knowledge, this contribution is first to apply a weighted class specific dictionary learning method on realistic human action recognition datasets.
机译:在最近十年中,人类动作识别已成为计算机视觉研究人员的热门领域。本文提出了一种基于文本信息概念的人类动作识别方案,该概念受文档检索系统的启发。视频是使用常用的本地要素表示法表示的。此外,我们制定了一种新的加权类特定词典学习方案,以反映视觉单词对特定动作类的重要性。特定于加权类的词典学习丰富了该方案,以学习特定动作类的稀疏表示。为了在现实和复杂的情况下评估我们的方案,我们已经在UCF Sports和UCF11基准数据集上对其进行了测试。本文报告的实验结果优于UCF Sports和UCF11数据集的最新技术,即平均准确率分别为98.93%和93.88%。据我们所知,这种贡献是首先将加权类特定的字典学习方法应用于现实的人类动作识别数据集。

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