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Impact of Automated Action Labeling in Classification of Human Actions in RGB-D Videos

机译:自动化动作标签在RGB-D视频分类中的影响

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For many applications it is important to be able to detect what a human is currently doing. This ability is useful for applications such as surveillance, human computer interfaces, games and healthcare. In order to recognize a human action, the typical approach is to use manually labeled data to perform supervised training. This paper aims to compare the performance of several supervised classifiers trained with manually labeled data versus the same classifiers trained with data automatically labeled. In this paper we propose a framework capable of recognizing human actions using supervised classifiers trained with automatically labeled data in RGB-D videos.
机译:对于许多应用程序,能够检测到现在正在进行的人是很重要的。 这种能力对监视,人机界面,游戏和医疗保健等应用有用。 为了识别人类的行动,典型的方法是使用手动标记的数据来执行监督培训。 本文旨在比较培训的多个受监控分类器的性能与手动标记的数据,而具有自动标记的数据训练的相同分类器。 在本文中,我们提出了一种能够使用在RGB-D视频中自动标记的数据训练的监督分类器来识别人类行动的框架。

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