15,000个对象类别告诉我们关于分类和定位动作的什么信息?

Mihir Jain, J. V. Gemert, Cees G. M. Snoek
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引用次数: 185

摘要

本文的研究有助于视频中人类行为的自动分类和定位。鉴于运动是现代方法的关键因素,我们评估了在视频表示中使用对象的好处。我们没有考虑少数精心挑选和本地化的对象,而是使用6个数据集对15,000个对象类别进行编码的好处进行了实证研究,这些数据集总计超过200小时的视频,涵盖180个动作类。我们的主要贡献是i)第一次深入研究了为操作编码对象,ii)我们展示了对象对操作很重要,并且通常在语义上也是相关的。iii)我们确定动作具有对象偏好。而不是使用所有的对象,选择有利于动作识别。iv)我们揭示了对象-动作关系是通用的,这允许将这些关系从一个领域转移到另一个领域。当物体与运动结合在一起时,可以提高动作分类和定位的技术水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What do 15,000 object categories tell us about classifying and localizing actions?
This paper contributes to automatic classification and localization of human actions in video. Whereas motion is the key ingredient in modern approaches, we assess the benefits of having objects in the video representation. Rather than considering a handful of carefully selected and localized objects, we conduct an empirical study on the benefit of encoding 15,000 object categories for action using 6 datasets totaling more than 200 hours of video and covering 180 action classes. Our key contributions are i) the first in-depth study of encoding objects for actions, ii) we show that objects matter for actions, and are often semantically relevant as well. iii) We establish that actions have object preferences. Rather than using all objects, selection is advantageous for action recognition. iv)We reveal that object-action relations are generic, which allows to transferring these relationships from the one domain to the other. And, v) objects, when combined with motion, improve the state-of-the-art for both action classification and localization.
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