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Sequential Bayesian Nonparametric Multimodal Topic Models for Video Data Analysis

机译:视频数据分析的顺序贝叶斯非参数多峰主题模型

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Topic modeling as a well-known method is widely applied for not only text data mining but also multimedia data analysis such as video data analysis. However, existing models cannot adequately handle time dependency and multimodal data modeling for video data that generally contain image information and speech information. In this paper, we therefore propose a novel topic model, sequential symmetric correspondence hierarchical Dirichlet processes (Seq-Sym-cHDP) extended from sequential conditionally independent hierarchical Dirichlet processes (Seq-CI-HDP) and sequential correspondence hierarchical Dirichlet processes (Seq-cHDP), to improve the multimodal data modeling mechanism via controlling the pivot assignments with a latent variable. An inference scheme for Seq-Sym-cHDP based on a posterior representation sampler is also developed in this work. We finally demonstrate that our model outperforms other baseline models via experiments.
机译:作为一种众所周知的方法,主题建模不仅广泛应用于文本数据挖掘,而且还广泛应用于诸如视频数据分析之类的多媒体数据分析。但是,现有模型无法充分处理通常包含图像信息和语音信息的视频数据的时间依赖性和多峰数据建模。因此,在本文中,我们提出了一个新颖的主题模型,即从顺序有条件独立的分层Dirichlet流程(Seq-CI-HDP)和顺序对应的分层Dirichlet流程(Seq-cHDP)扩展而来的顺序对称对应分层Dirichlet流程(Seq-Sym-cHDP) ),以通过使用潜在变量控制数据透视分配来改善多峰数据建模机制。在这项工作中,还提出了一种基于后验表示采样器的Seq-Sym-cHDP推理方案。最后,我们通过实验证明了我们的模型优于其他基准模型。

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