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Unsupervised Learning and Segmentation of Complex Activities from Video

机译:视频的无监督学习和复杂活动细分

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This paper presents a new method for unsupervised segmentation of complex activities from video into multiple steps, or sub-activities, without any textual input. We propose an iterative discriminative-generative approach which alternates between discriminatively learning the appearance of sub-activities from the videos' visual features to sub-activity labels and generatively modelling the temporal structure of sub-activities using a Generalized Mallows Model. In addition, we introduce a model for background to account for frames unrelated to the actual activities. Our approach is validated on the challenging Breakfast Actions and Inria Instructional Videos datasets and outperforms both unsupervised and weakly-supervised state of the art.
机译:本文提出了一种新方法,可将视频中的复杂活动无监督地分割为多个步骤或子活动,而无需任何文本输入。我们提出了一种迭代式判别式-生成式方法,该方法在辨别性地学习子活动的外观(从视频的视觉特征到子活动标签)与使用通用的Mallows模型生成子活动的时间结构之间进行切换。另外,我们引入了背景模型来说明与实际活动无关的框架。我们的方法在具有挑战性的早餐行动和Inria教学视频数据集上得到了验证,其性能优于无监督和弱监督的最新技术水平。

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