面向交叉视角动作识别的判别性三维波selet挖掘

Jiang Wang, Xiaohan Nie, Yin Xia, Ying Wu
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引用次数: 2

摘要

提出了一种新的跨视动作识别方法。传统的交叉视图动作识别方法通常依赖于局部外观/运动特征。在本文中,我们利用深度相机的最新发展来构建更具判别性的跨视图动作表示。在这种表示中,一个动作的特征是三维Poselet的时空配置,这些Poselet是用一种新的Poselet挖掘算法鉴别发现的,并且可以用视图不变的3D Poselet检测器检测到。Kinect骨架用于3D Poselet挖掘和3D Poselet检测器学习,但识别仅基于2D视频输入。大量的实验表明,这种新的动作表示显著提高了跨视动作识别的准确性和鲁棒性。
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Mining discriminative 3D Poselet for cross-view action recognition
This paper presents a novel approach to cross-view action recognition. Traditional cross-view action recognition methods typically rely on local appearance/motion features. In this paper, we take advantage of the recent developments of depth cameras to build a more discriminative cross-view action representation. In this representation, an action is characterized by the spatio-temporal configuration of 3D Poselets, which are discriminatively discovered with a novel Poselet mining algorithm and can be detected with view-invariant 3D Poselet detectors. The Kinect skeleton is employed to facilitate the 3D Poselet mining and 3D Poselet detectors learning, but the recognition is solely based on 2D video input. Extensive experiments have demonstrated that this new action representation significantly improves the accuracy and robustness for cross-view action recognition.
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