Bilinear spatiotemporal basis models

Ijaz Akhter, T. Simon, Sohaib Khan, I. Matthews, Yaser Sheikh
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引用次数: 127

Abstract

A variety of dynamic objects, such as faces, bodies, and cloth, are represented in computer graphics as a collection of moving spatial landmarks. Spatiotemporal data is inherent in a number of graphics applications including animation, simulation, and object and camera tracking. The principal modes of variation in the spatial geometry of objects are typically modeled using dimensionality reduction techniques, while concurrently, trajectory representations like splines and autoregressive models are widely used to exploit the temporal regularity of deformation. In this article, we present the bilinear spatiotemporal basis as a model that simultaneously exploits spatial and temporal regularity while maintaining the ability to generalize well to new sequences. This factorization allows the use of analytical, predefined functions to represent temporal variation (e.g., B-Splines or the Discrete Cosine Transform) resulting in efficient model representation and estimation. The model can be interpreted as representing the data as a linear combination of spatiotemporal sequences consisting of shape modes oscillating over time at key frequencies. We apply the bilinear model to natural spatiotemporal phenomena, including face, body, and cloth motion data, and compare it in terms of compaction, generalization ability, predictive precision, and efficiency to existing models. We demonstrate the application of the model to a number of graphics tasks including labeling, gap-filling, denoising, and motion touch-up.
双线性时空基础模型
各种各样的动态对象,如脸、身体和衣服,在计算机图形学中被表示为移动空间地标的集合。时空数据在许多图形应用程序中是固有的,包括动画、仿真、对象和相机跟踪。物体空间几何变化的主要模式通常使用降维技术建模,同时,样条和自回归模型等轨迹表示被广泛用于利用变形的时间规律。在这篇文章中,我们提出双线性时空基础作为一个模型,同时利用空间和时间的规律性,同时保持推广到新序列的能力。这种分解允许使用解析的、预定义的函数来表示时间变化(例如,b样条或离散余弦变换),从而产生有效的模型表示和估计。该模型可以被解释为将数据表示为时空序列的线性组合,这些序列由在关键频率上随时间振荡的形状模式组成。我们将双线性模型应用于自然时空现象,包括面部、身体和布料运动数据,并在压缩、泛化能力、预测精度和效率方面与现有模型进行比较。我们演示了该模型在许多图形任务中的应用,包括标记、空白填充、去噪和运动补图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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