Modelling daily actions through hand-based spatio-temporal features

Olga Mur, M. Frigola, A. Casals
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引用次数: 3

Abstract

In this paper, we propose a new approach to domestic action recognition based on a set of features which describe the relation between poses and movements of both hands. These features represent a set of basic actions in a kitchen in terms of the mimics of the hand movements, without needing information of the objects present in the scene. They address specifically the intra-class dissimilarity problem, which occurs when the same action is performed in different ways. The goal is to create a generic methodology that enables a robotic assistant system to recognize actions related to daily life activities and then, be endowed with a proactive behavior. The proposed system uses depth and color data acquired from a Kinect-style sensor and a hand tracking system. We analyze the relevance of the proposed hand-based features using a state-space search approach. Finally, we show the effectiveness of our action recognition approach using our own dataset.
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通过基于手的时空特征对日常行为进行建模
在本文中,我们提出了一种基于描述双手姿势和运动之间关系的特征集的家庭动作识别新方法。这些特征代表了厨房中模仿手部动作的一组基本动作,而不需要场景中物体的信息。它们专门解决了类内不相似性问题,当以不同的方式执行相同的操作时,就会出现这种问题。目标是创建一种通用的方法,使机器人助理系统能够识别与日常生活活动相关的动作,然后赋予主动行为。该系统使用kinect式传感器和手部跟踪系统获取的深度和颜色数据。我们使用状态空间搜索方法分析了手特征的相关性。最后,我们用自己的数据集展示了我们的动作识别方法的有效性。
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