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Exploring encoding and normalization methods on probabilistic latent semantic analysis model for action recognition

机译:探索用于动作识别的概率潜在语义分析模型的编码和归一化方法

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Topic models have been wildly applied in the field of computer vision, through which superior performance was yielded in various recognizing tasks. Among them, probabilistic latent semantic analysis model has earned much attention due to its simplicity and effect. But the affection of encoding and normalization methods on topic models has been ignored during the period. This paper explores the impact of encoding methods combined with different normalization on probabilistic latent semantic analysis model in the context of action classification in videos. Detailed experiments are conducted on KTH and UT-interaction datasets. The results show that an appropriate combination of encoding and normalization methods could significantly improve the performance of probabilistic latent semantic analysis model. The recognition accuracy reachs 96.44% and 93.33% on UT-interaction set1 and set2 respectively, which outperforms the state-of-the-art. Especially, we obtain 94.24% on UT-interaction set1 using sparse STIPs.
机译:主题模型已在计算机视觉领域得到了广泛应用,通过它在各种识别任务中产生了卓越的性能。其中,概率潜在语义分析模型由于其简单性和有效性而备受关注。但是在此期间,编码和规范化方法对主题模型的影响已被忽略。本文探讨了在视频动作分类的背景下,结合不同归一化的编码方法对概率潜在语义分析模型的影响。在KTH和UT互动数据集上进行了详细的实验。结果表明,适当组合编码和规范化方法可以显着提高概率潜在语义分析模型的性能。在UT交互set1和set2上,识别精度分别达到96.44%和93.33%,超过了最新技术。特别是,我们使用稀疏STIP获得了UT交互set1的94.24%。

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