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Switching Gaussian Process Dynamic Models for Simultaneous Composite Motion Tracking and Recognition

机译:切换高斯工艺动态模型,同时复合运动跟踪和识别

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Traditional dynamical systems used for motion tracking cannot effectively handle high dimensionality of the motion states and composite dynamics. In this paper, to address both issues simultaneously, we propose the marriage of the switching dynamical system and recent Gaussian Process Dynamic Models (GPDM), yielding a new model called the switching GPDM (SGPDM). The proposed switching variables enable the SGPDM to capture diverse motion dynamics effectively, and also allow to identify the motion class (e.g. walk or run in the human motion tracking, smile or angry in the facial motion tracking), which naturally leads to the idea of simultaneous motion tracking and classification. Moreover, each of GPDMs in SGPDM can faithfully model its corresponding primitive motion, while performing tracking in the low-dimensional latent space, therefore significantly improving the tracking efficiency. The proposed SGPDM is then applied to human body motion tracking and classification, and facial motion tracking and recognition. We demonstrate the performance of our model on several composite body motion videos obtained from the CMU database, including exercises and salsa dance. We also demonstrate the robustness of our model in terms of both facial feature tracking and facial expression/pose recognition performance on real videos under diverse scenarios including pose change, low frame rate and low quality videos.
机译:用于运动跟踪传统动力系统无法有效处理的运动状态和复合动力学的高维数。在本文中,同时解决这两个问题,我们提出了交换的动力系统和最近的高斯过程动态模型(GPDM)的联姻,产生了称为交换GPDM(SGPDM)新模式。建议开关变量使SGPDM有效地捕捉到不同的运动动力学,并且还允许识别运动类(如散步,或在人体运动跟踪运行,微笑或面部运动跟踪生气),这自然导致的想法同时运动跟踪和分类。此外,每个在SGPDM GPDMs的能忠实建模其相应的原始运动,同时执行在低维潜在空间追踪,因此显著提高跟踪效率。然后所提出SGPDM被施加到人体的运动跟踪和分类,和面部动作跟踪和识别。我们证明我们的模型从CMU数据库,包括练习和莎莎舞蹈获得多项复合体运动视频的效果。我们还演示了在这两个的脸部特征跟踪和在不同场景真实的影片,包括姿态的变化,低帧频和低质量的视频面部表情/姿势识别性能方面我们的模型的鲁棒性。

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