A geometric framework for statistical analysis of trajectories with distinct temporal spans.

Rudrasis Chakraborty, Vikas Singh, Nagesh Adluru, Baba C Vemuri
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引用次数: 7

Abstract

Analyzing data representing multifarious trajectories is central to the many fields in Science and Engineering; for example, trajectories representing a tennis serve, a gymnast's parallel bar routine, progression/remission of disease and so on. We present a novel geometric algorithm for performing statistical analysis of trajectories with distinct number of samples representing longitudinal (or temporal) data. A key feature of our proposal is that unlike existing schemes, our model is deployable in regimes where each participant provides a different number of acquisitions (trajectories have different number of sample points or temporal span). To achieve this, we develop a novel method involving the parallel transport of the tangent vectors along each given trajectory to the starting point of the respective trajectories and then use the span of the matrix whose columns consist of these vectors, to construct a linear subspace in R m . We then map these linear subspaces (possibly of distinct dimensions) of R m on to a single high dimensional hypersphere. This enables computing group statistics over trajectories by instead performing statistics on the hypersphere (equipped with a simpler geometry). Given a point on the hypersphere representing a trajectory, we also provide a "reverse mapping" algorithm to uniquely (under certain assumptions) reconstruct the subspace that corresponds to this point. Finally, by using existing algorithms for recursive Fréchet mean and exact principal geodesic analysis on the hypersphere, we present several experiments on synthetic and real (vision and medical) data sets showing how group testing on such diversely sampled longitudinal data is possible by analyzing the reconstructed data in the subspace spanned by the first few principal components.

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具有不同时间跨度的轨迹统计分析的几何框架。
分析代表多种轨迹的数据是科学和工程许多领域的核心;例如,代表网球发球的轨迹,体操运动员的双杠动作,疾病的进展/缓解等等。我们提出了一种新的几何算法,用于对具有不同数量的代表纵向(或时间)数据的样本的轨迹进行统计分析。我们建议的一个关键特征是,与现有方案不同,我们的模型可部署在每个参与者提供不同数量的获取(轨迹具有不同数量的样本点或时间跨度)的制度中。为了实现这一点,我们开发了一种新的方法,涉及沿每个给定轨迹的切向量平行移动到各自轨迹的起点,然后使用由这些向量组成的列矩阵的张成空间来构造rm中的线性子空间。然后我们将这些rm的线性子空间(可能是不同维数的)映射到一个高维超球上。这可以通过在超球(配备更简单的几何结构)上执行统计数据来计算轨迹上的组统计数据。给定超球上的一个点表示轨迹,我们还提供了一个“反向映射”算法来唯一地(在某些假设下)重建与该点对应的子空间。最后,通过使用现有的超球递归fr均值和精确主测地分析算法,我们在合成和真实(视觉和医学)数据集上进行了几个实验,展示了如何通过分析由前几个主成分跨越的子空间中的重构数据来对这些不同采样的纵向数据进行群测试。
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