论文标题

基于外观的动作识别的最新进展

Recent Progress in Appearance-based Action Recognition

论文作者

Humphreys, Jack, Chen, Zhe, Tao, Dacheng

论文摘要

行动识别是确定视频中各种人类行动的一项任务,由于其在各种应用中的重要性而引起了计算机视觉研究人员的兴趣。最近,基于外观的方法取得了有希望的进步,以准确的行动识别。通常,这些方法主要通过应用各种方案来有效地建模空间和时间视觉信息来实现任务。为了更好地了解当前基于外观的动作识别的进展,我们对该领域的最新成就进行了全面的审查。特别是,我们总结并讨论了数十本相关的研究论文,可以根据不同的外观建模策略将其大致分为四类。获得的类别包括2D卷积方法,3D卷积方法,基于运动表示的方法和基于上下文表示的方法。我们全面分析和讨论来自每个类别的代表性方法。还总结了经验结果以更好地说明尖端算法。最后,我们确定了从分类中收集的未来研究的重要领域。

Action recognition, which is formulated as a task to identify various human actions in a video, has attracted increasing interest from computer vision researchers due to its importance in various applications. Recently, appearance-based methods have achieved promising progress towards accurate action recognition. In general, these methods mainly fulfill the task by applying various schemes to model spatial and temporal visual information effectively. To better understand the current progress of appearance-based action recognition, we provide a comprehensive review of recent achievements in this area. In particular, we summarise and discuss several dozens of related research papers, which can be roughly divided into four categories according to different appearance modelling strategies. The obtained categories include 2D convolutional methods, 3D convolutional methods, motion representation-based methods, and context representation-based methods. We analyse and discuss representative methods from each category, comprehensively. Empirical results are also summarised to better illustrate cutting-edge algorithms. We conclude by identifying important areas for future research gleaned from our categorisation.

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