Actom sequence models for efficient action detection

Adrien Gaidon, Zaïd Harchaoui, C. Schmid
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引用次数: 179

Abstract

We address the problem of detecting actions, such as drinking or opening a door, in hours of challenging video data. We propose a model based on a sequence of atomic action units, termed “actoms”, that are characteristic for the action. Our model represents the temporal structure of actions as a sequence of histograms of actom-anchored visual features. Our representation, which can be seen as a temporally structured extension of the bag-of-features, is flexible, sparse and discriminative. We refer to our model as Actom Sequence Model (ASM). Training requires the annotation of actoms for action clips. At test time, actoms are detected automatically, based on a non parametric model of the distribution of actoms, which also acts as a prior on an action's temporal structure. We present experimental results on two recent benchmarks for temporal action detection, “Coffee and Cigarettes” [12] and the dataset of [3]. We show that our ASM method outperforms the current state of the art in temporal action detection.
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用于有效动作检测的动作序列模型
我们解决了在几个小时具有挑战性的视频数据中检测动作的问题,例如饮酒或开门。我们提出了一个基于一系列原子作用单元的模型,称为“原子”,它们是作用的特征。我们的模型将动作的时间结构表示为动作锚定视觉特征的直方图序列。我们的表征,可以看作是特征袋的时间结构扩展,是灵活的,稀疏的和判别的。我们把我们的模型称为Actom序列模型(ASM)。训练需要动作剪辑的动作注释。在测试时,基于动作分布的非参数模型自动检测动作,该模型也作为动作时间结构的先验。我们介绍了两个最新的时间动作检测基准的实验结果,“咖啡和香烟”[12]和[3]数据集。我们表明,我们的ASM方法在时间动作检测方面优于当前的艺术状态。
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