Darwintrees for Action Recognition

Albert Clapés, T. Tuytelaars, Sergio Escalera
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引用次数: 2

Abstract

We propose a novel mid-level representation for action/activity recognition on RGB videos. We model the evolution of improved dense trajectory features not only for the entire video sequence, but also on subparts of the video. Subparts are obtained using a spectral divisive clustering that yields an unordered binary tree decomposing the entire cloud of trajectories of a sequence. We then compute video-darwin on video subparts, exploiting more finegrained temporal information and reducing the sensitivity of the standard time varying mean strategy of videodarwin. After decomposition, we model the evolution of features through both frames of subparts and descending/ascending paths in tree branches. We refer to these mid-level representations as node-darwintree and branch-darwintree respectively. For the final classification, we construct a kernel representation for both mid-level and holistic videodarwin representations. Our approach achieves better performance than standard videodarwin and defines the current state-of-the-art on UCF-Sports and Highfive action recognition datasets.
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动作识别的达尔文树
我们提出了一种新的用于RGB视频动作/活动识别的中级表示。我们不仅对整个视频序列,而且还对视频的子部分进行了改进的密集轨迹特征的演化建模。子部分是通过光谱分裂聚类获得的,该聚类产生一棵无序二叉树,分解序列的整个轨迹云。然后,我们在视频子部分上计算视频达尔文,利用更细粒度的时间信息,降低视频达尔文标准时变均值策略的灵敏度。分解后,我们通过子部件框架和树分支中的下降/上升路径来建模特征的演化。我们将这些中层表示分别称为节点-达尔文树和分支-达尔文树。对于最后的分类,我们为中级和整体视频达尔文表示构建了一个核表示。我们的方法实现了比标准videodarwin更好的性能,并在UCF-Sports和Highfive动作识别数据集上定义了当前最先进的技术。
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