Mutually reinforcing motion-pose framework for pose invariant action recognition

M. Ramanathan, W. Yau, N. Magnenat-Thalmann, E. Teoh
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引用次数: 3

Abstract

Action recognition from videos has many potential applications. However, there are many unresolved challenges, such as pose-invariant recognition, robustness to occlusion and others. In this paper, we propose to combine motion of body parts and pose hypothesis generation validated with specific canonical poses observed in a novel mutually reinforcing framework to achieve pose-invariant action recognition. To capture the temporal dynamics of an action, we introduce temporal stick features computed using the stick poses obtained. The combination of pose-invariant kinematic features from motion, pose hypothesis and temporal stick features are used for action recognition, thus forming a mutually reinforcing framework that repeats until the action recognition result converges. The proposed mutual reinforcement framework is capable of handling changes in posture of the person, occlusion and partial view-invariance. We perform experiments on several benchmark datasets which showed the performance of the proposed algorithm and its ability to handle pose variation and occlusion.
姿态不变动作识别的相互强化运动-姿态框架
视频中的动作识别有许多潜在的应用。然而,仍有许多未解决的挑战,如姿态不变识别、遮挡鲁棒性等。在本文中,我们提出将身体部位的运动和姿势假设生成结合起来,并在一个新的相互增强的框架中观察到特定的规范姿势,以实现姿势不变的动作识别。为了捕捉动作的时间动态,我们引入了使用获得的操纵杆姿势计算的时间操纵杆特征。动作识别结合运动的位姿不变运动学特征、位姿假设和时间粘滞特征,形成一个相互强化的框架,不断重复,直到动作识别结果收敛。所提出的相互增强框架能够处理人的姿态变化、遮挡和部分视图不变性。我们在几个基准数据集上进行了实验,证明了该算法的性能及其处理姿态变化和遮挡的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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