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Predicting articulated human motion from spatial processes

机译:从空间过程预测关节运动

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摘要

We present a probabilistic interpretation of inverse kinematics and extend it to sequential data. The resulting model is used to estimate articulated human motion in visual data. The approach allows us to express the prior temporal models in spatial limb coordinates, which is in contrast to most recent work where prior models are derived in terms of joint angles. This approach has several advantages. First of all, it allows us to construct motion models in low dimensional spaces, which makes motion estimation more robust. Secondly, as many types of motion are easily expressed in spatial coordinates, the approach allows us to construct high quality application specific motion models with little effort. Thirdly, the state space is a real vector space, which allows us to use off-the-shelf stochastic processes as motion models, which is rarely possible when working with joint angles. Fourthly, we avoid the problem of accumulated variance, where noise in one joint affects all joints further down the kinematic chains. All this combined allows us to more easily construct high quality motion models. In the evaluation, we show that an activity independent version of our model is superior to the corresponding state-of-the-art model. We also give examples of activity dependent models that would be hard to phrase directly in terms of joint angles.
机译:我们提出了逆运动学的概率解释,并将其扩展到顺序数据。所得模型用于估计视觉数据中的关节运动。该方法使我们能够在空间肢体坐标中表达先前的时间模型,这与最新的工作相反,在最新的工作中,先前的模型是根据关节角度导出的。这种方法有几个优点。首先,它允许我们在低维空间中构造运动模型,这使运动估计更加可靠。其次,由于许多类型的运动很容易在空间坐标中表示,因此该方法使我们可以轻松构建高质量的特定于应用的运动模型。第三,状态空间是一个实向量空间,它使我们可以使用现成的随机过程作为运动模型,而在处理关节角时则很少发生这种情况。第四,我们避免了累积方差的问题,因为一个关节中的噪声会影响运动链下游的所有关节。所有这些结合在一起,使我们能够更轻松地构建高质量的运动模型。在评估中,我们证明了我们模型的活动独立版本优于相应的最新模型。我们还给出了依赖于活动的模型的示例,这些模型很难直接用关节角度来表述。

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