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Semi Supervised Learning for Human Activity Recognition Using Depth Cameras

机译:使用深度摄像头进行人活动识别的半监督学习

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Human action recognition is a very active research topic in computer vision and pattern recognition. Recently, it has shown a great potential for human action recognition using the 3D depth data captured by the promising RGB-D cameras, and particularly, the Microsoft Kinect which has made high resolution real-time depth cheaply available. Several features and descriptors have been proposed for depth based action recognition, and they have given high results when recognizing the actions, but one dilemma always exists, the labeled data given, which are manually set by humans. They are not enough to build the system, especially that the use of human action recognition is mainly for surveillance of people activities. In this paper, the paucity of labeled data is addressed, by the popular semi supervision machine learning technique "co-training", which makes full use of unlabeled samples of two different independent views. Through the experiments on two popular datasets (MSR Action 3D, and MSR DailyActivity 3D), we demonstrate that our proposed framework outperforms the state of art. It improves the accuracy up to 83% in case of MSR Action 3D, and up to 80% MSR DailyActivity 3D, using the same number of labeled samples.
机译:人体动作识别是计算机视觉和模式识别中非常活跃的研究主题。最近,它已显示出巨大的潜力,可以使用有前途的RGB-D相机捕获的3D深度数据进行人体动作识别,尤其是可以便宜地获得高分辨率实时深度的Microsoft Kinect。已经提出了几种用于基于深度的动作识别的特征和描述符,它们在识别动作时给出了很高的结果,但是始终存在一个难题,即给定的标记数据,这是由人类手动设置的。它们不足以构建系统,尤其是人类行为识别的使用主要用于监视人们的活动。在本文中,通过流行的半监督机器学习技术“ co-training”解决了标记数据的匮乏问题,该技术充分利用了两种不同独立视图的未标记样本。通过在两个流行的数据集(MSR Action 3D和MSR DailyActivity 3D)上进行的实验,我们证明了我们提出的框架优于现有技术。如果使用相同数量的标记样品,它在MSR Action 3D情况下的准确性提高了83%,在MSR DailyActivity 3D中提高了80%。

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