基于骨骼的人处理物体的动作识别

Sunoh Kim, Kimin Yun, Jongyoul Park, J. Choi
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引用次数: 27

摘要

在视觉监控系统中,有必要识别人们处理手机、杯子或塑料袋等物体的行为。在本文中,为了解决这个问题,我们提出了一个新的框架,通过使用人和物体姿态的图卷积网络来识别与物体相关的人类行为。在这个框架中,我们通过选择性地采样视频中的信息帧来构建可靠的人体姿势骨骼图,其中包括在姿势估计中获得高置信度分数的人体关节。从采样帧生成的骨架图表示与空间和时间域中的物体位置相关的人体姿势,这些图被用作图卷积网络的输入。通过在开放基准和我们自己的数据集上的实验,我们验证了我们框架的有效性,因为我们的方法优于基于骨架的最先进的动作识别方法。
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Skeleton-Based Action Recognition of People Handling Objects
In visual surveillance systems, it is necessary to recognize the behavior of people handling objects such as a phone, a cup, or a plastic bag. In this paper, to address this problem, we propose a new framework for recognizing object-related human actions by graph convolutional networks using human and object poses. In this framework, we construct skeletal graphs of reliable human poses by selectively sampling the informative frames in a video, which include human joints with high confidence scores obtained in pose estimation. The skeletal graphs generated from the sampled frames represent human poses related to the object position in both the spatial and temporal domains, and these graphs are used as inputs to the graph convolutional networks. Through experiments over an open benchmark and our own data sets, we verify the validity of our framework in that our method outperforms the state-of-the-art method for skeleton-based action recognition.
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