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Generalized Laplacian Eigenmaps for Modeling and Tracking Human Motions

机译:用于人体运动建模和跟踪的广义Laplacian特征图

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摘要

This paper presents generalized Laplacian eigenmaps, a novel dimensionality reduction approach designed to address stylistic variations in time series. It generates compact and coherent continuous spaces whose geometry is data-driven. This paper also introduces graph-based particle filter, a novel methodology conceived for efficient tracking in low dimensional space derived from a spectral dimensionality reduction method. Its strengths are a propagation scheme, which facilitates the prediction in time and style, and a noise model coherent with the manifold, which prevents divergence, and increases robustness. Experiments show that a combination of both techniques achieves state-of-the-art performance for human pose tracking in underconstrained scenarios.
机译:本文介绍了广义拉普拉斯特征图,这是一种新颖的降维方法,旨在解决时间序列中的风格变化。它生成紧凑且连贯的连续空间,其几何由数据驱动。本文还介绍了基于图的粒子滤波器,这是一种新颖的方法,它是从光谱维数减少方法派生的,用于在低维空间中进行有效跟踪的方法。它的优点是传播方案(有助于在时间和样式上进行预测)以及与流形一致的噪声模型(可防止发散并提高鲁棒性)。实验表明,这两种技术的结合可以在约束不足的情况下实现最新的人体姿势跟踪性能。

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