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Incremental learning of human activity models from videos

机译:通过视频增量学习人类活动模型

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Learning human activity models from streaming videos should be a continuous process as new activities arrive over time. However, recent approaches for human activity recognition are usually batch methods, which assume that all the training instances are labeled and present in advance. Among such methods, the exploitation of the inter-relationship between the various objects in the scene (termed as context) has proved extremely promising. Many state-of-the-art approaches learn human activity models continuously but do not exploit the contextual information. In this paper, we propose a novel framework that continuously learns both of the appearance and the context models of complex human activities from streaming videos. We automatically construct a conditional random field (CRF) graphical model to encode the mutual contextual information among the activities and the related object attributes. In order to reduce the amount of manual labeling of the incoming instances, we exploit active learning to select the most informative training instances with respect to both of the appearance and the context models to incrementally update these models. Rigorous experiments on four challenging datasets demonstrate that our framework outperforms state-of-the-art approaches with significantly less amount of manually labeled data.
机译:随着新活动的到来,从流媒体视频中学习人类活动模型应该是一个连续的过程。但是,用于人类活动识别的最新方法通常是批处理方法,它们假定所有训练实例都已标记并预先存在。在这些方法中,事实证明,利用场景中各种对象(称为上下文)之间的相互关系非常有希望。许多最先进的方法不断学习人类活动模型,但没有利用上下文信息。在本文中,我们提出了一个新颖的框架,该框架可以从流式视频中连续学习复杂人类活动的外观和上下文模型。我们自动构建条件随机场(CRF)图形模型,以对活动和相关对象属性之间的相互上下文信息进行编码。为了减少传入实例的手动标记数量,我们利用主动学习来选择有关外观和上下文模型的信息最丰富的训练实例,以逐步更新这些模型。在四个具有挑战性的数据集上进行的严格实验表明,我们的框架以最少量的手动标记数据胜过了最先进的方法。

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