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Modeling Scene and Object Contexts for Human Action Retrieval With Few Examples

机译:用很少的示例为人类动作检索建模场景和对象上下文

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The use of context knowledge is critical for understanding human actions, which typically occur under particular scene settings with certain object interactions. For instance, driving car usually happens outdoors, and kissing involves two people moving toward each other. In this paper, we investigate the problem of context modeling for human action retrieval. We first identify ten simple object-level action atoms relevant to many human actions, e.g., people getting closer. With the action atoms and several background scene classes, we show that action retrieval can be improved through modeling action-scene-object dependency. An algorithm inspired by the popular semi-supervised learning paradigm is introduced for this purpose. One important contribution of this paper is to show that modeling the dependencies among actions, objects, and scenes can be efficiently achieved with very few examples. Such a solution has tremendous potential in practice as it is often expensive to acquire large sets of training data. Experiments were performed on the challenging Hollywood2 dataset containing 89 movies. The results validate the effectiveness of our approach, achieving a mean average precision of 26% with just ten examples per action.
机译:背景知识的使用对于理解人类行为至关重要,人类行为通常发生在具有特定对象交互作用的特定场景设置下。例如,开车通常发生在户外,而接吻则涉及两个人互相靠近。在本文中,我们研究了用于人类动作检索的上下文建模问题。我们首先确定与许多人类动作相关的十个简单的对象级动作原子,例如人们之间的距离越来越近。使用动作原子和几个背景场景类,我们表明可以通过对动作场景对象依赖进行建模来改善动作检索。为此目的,引入了一种受流行的半监督学习范式启发的算法。本文的一个重要贡献是表明,只需很少的示例就可以有效地对动作,对象和场景之间的依赖关系进行建模。这种解决方案在实践中具有巨大的潜力,因为获取大量训练数据通常很昂贵。在包含89部电影的具有挑战性的Hollywood2数据集上进行了实验。结果证明了我们方法的有效性,平均平均精度为26%,每个动作仅十个示例。

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