Actions in context

Marcin Marszalek, I. Laptev, C. Schmid
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引用次数: 1350

Abstract

This paper exploits the context of natural dynamic scenes for human action recognition in video. Human actions are frequently constrained by the purpose and the physical properties of scenes and demonstrate high correlation with particular scene classes. For example, eating often happens in a kitchen while running is more common outdoors. The contribution of this paper is three-fold: (a) we automatically discover relevant scene classes and their correlation with human actions, (b) we show how to learn selected scene classes from video without manual supervision and (c) we develop a joint framework for action and scene recognition and demonstrate improved recognition of both in natural video. We use movie scripts as a means of automatic supervision for training. For selected action classes we identify correlated scene classes in text and then retrieve video samples of actions and scenes for training using script-to-video alignment. Our visual models for scenes and actions are formulated within the bag-of-features framework and are combined in a joint scene-action SVM-based classifier. We report experimental results and validate the method on a new large dataset with twelve action classes and ten scene classes acquired from 69 movies.
上下文中的动作
本文利用自然动态场景背景进行视频中的人体动作识别。人类的行为经常受到场景的目的和物理特性的约束,并与特定的场景类别表现出高度的相关性。例如,吃饭通常发生在厨房,而跑步更常见的是在户外。本文的贡献有三个方面:(a)我们自动发现了相关的场景类及其与人类行为的相关性,(b)我们展示了如何在没有人工监督的情况下从视频中学习选定的场景类,(c)我们开发了一个动作和场景识别的联合框架,并展示了在自然视频中对两者的改进识别。我们使用电影剧本作为自动监督训练的手段。对于选定的动作类,我们在文本中识别相关的场景类,然后检索动作和场景的视频样本,使用脚本到视频对齐进行训练。我们的场景和动作的视觉模型是在特征袋框架内制定的,并结合在一个基于svm的联合场景-动作分类器中。我们报告了实验结果,并在一个新的大型数据集上验证了该方法,该数据集包含来自69部电影的12个动作类和10个场景类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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