Human Activity Recognition from automatically labeled data in RGB-D videos

David Jardim, Luís Nunes, José Miguel Salles Dias
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引用次数: 5

Abstract

Human Activity Recognition (HAR) is an interdisciplinary research area that has been attracting interest from several research communities specialized in machine learning, computer vision, medical and gaming research. The potential applications range from surveillance systems, human computer interfaces, sports video analysis, digital shopping assistants, video retrieval, games and health-care. Several and diverse approaches exist to recognize a human action. From computer vision techniques, modeling relations between human motion and objects, marker-based tracking systems and RGB-D cameras. Using a Kinect sensor that provides the position of the main skeleton joints we extract features based solely on the motion of those joints. 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. We propose a framework capable of recognizing human actions using supervised classifiers trained with automatically labeled data.
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基于RGB-D视频中自动标记数据的人类活动识别
人类活动识别(HAR)是一个跨学科的研究领域,已经吸引了几个专门从事机器学习、计算机视觉、医学和游戏研究的研究团体的兴趣。潜在的应用范围包括监控系统、人机界面、体育视频分析、数字购物助理、视频检索、游戏和医疗保健。有几种不同的方法可以识别人类的行为。从计算机视觉技术,人体运动和物体之间的建模关系,基于标记的跟踪系统和RGB-D相机。使用Kinect传感器提供主要骨骼关节的位置,我们仅根据这些关节的运动提取特征。本文旨在比较使用人工标记数据训练的几种监督分类器与使用自动标记数据训练的相同分类器的性能。我们提出了一个框架,能够使用自动标记数据训练的监督分类器来识别人类行为。
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