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Relevance Topic Model for Unstructured Social Group Activity Recognition

机译:非结构化社会群体活动识别的相关主题模型

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Unstructured social group activity recognition in web videos is a challenging task due to 1) the semantic gap between class labels and low-level visual features and 2) the lack of labeled training data. To tackle this problem, we propose a "relevance topic model" for jointly learning meaningful mid-level representations upon bag-of-words (BoW) video representations and a classifier with sparse weights. In our approach, sparse Bayesian learning is incorporated into an undirected topic model (i.e., Replicated Softmax) to discover topics which are relevant to video classes and suitable for prediction. Rectified linear units are utilized to increase the expressive power of topics so as to explain better video data containing complex contents and make variational inference tractable for the proposed model. An efficient variational EM algorithm is presented for model parameter estimation and inference. Experimental results on the Unstructured Social Activity Attribute dataset show that our model achieves state of the art performance and outperforms other supervised topic model in terms of classification accuracy, particularly in the case of a very small number of labeled training videos.
机译:在网络视频非结构化社交群体活动识别是一个具有挑战性的任务,由于1)班的标签和低级别的视觉特征和2之间的语义鸿沟)缺乏标记的训练数据。为了解决这个问题,我们提出了“相关主题模型”为共同学习后袋的字(弓)视频表示有意义的中层表示和稀疏权重分类。在我们的方法,稀疏贝叶斯学习纳入无向主题模型(即复制使用SoftMax)来发现其中的主题相关的视频类和适合的预测。整流线性单位用于提高主题的表现力,以解释包含复杂的内容更好的视频数据,并推断变听话了该模型。一个高效的变分EM算法,对模型参数估计和推断。在非结构化社交活动属性数据集上,我们的模型实现的先进的性能和优于其他监督主题模型在分类准确性方面,特别是在极少数的标记的训练视频的情况下的实验结果。

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