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Visual learning and recognition of a probabilistic spatio-temporal model of cyclic human locomotion

机译:视觉学习与循环人类运动概率时空模型的识别

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We present a novel representation of cyclic human locomotion based on a set of spatio-temporal curves of tracked points on the surface of a person. We start by extracting a set of continuous, phase aligned spatio-temporal curves from trajectories of random points tracked over several cycles of locomotion in a monocular video sequence. We analyze a PCA representation of a set of cyclic curves, pointing out properties of the representation which can be used for spatio-temporal alignment in tracking and recognition tasks. We model the curve distribution density by a mixture of Gaussians using expectation-maximization algorithm. For recognition, we use maximum a posteriori estimate combined with linear data adaptation. We tested the algorithms on CMU MoBo database with favourable results for the recognition of people "by walking "from monocular video sequences captured from the side view.
机译:我们基于一个人的表面上的跟踪点的时空曲线集提出了一种新颖的人类循环运动的表示形式。我们首先从单眼视频序列中经过几个运动周期的随机点的轨迹中提取出一组连续的,相位对齐的时空曲线。我们分析了一组循环曲线的PCA表示,指出了可用于跟踪和识别任务中的时空对齐的表示的属性。我们使用期望最大化算法,通过混合高斯模型对曲线分布密度进行建模。为了进行识别,我们将最大后验估计与线性数据自适应相结合。我们在CMU MoBo数据库上测试了该算法,并获得了令人满意的结果,从而可以从侧视图中捕获的单眼视频序列中“通过步行”识别人。

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