This chapter presents an overview of techniques used for the analysis, edition, and synthesis of time series, with a particular emphasis on motion data. The use of mixture models allows the decomposition of time signals as a superposition of basis functions. It provides a compact representation that aims at keeping the essential characteristics of the signals. Various types of basis functions have been proposed, with developments originating from different fields of research, including computer graphics, human motion science, robotics, control, and neuroscience. Examples of applications with radial, Bernstein and Fourier basis functions will be presented, with associated source codes to get familiar with these techniques.
翻译:本章概述了用于分析、版本和综合时间序列的技术,特别强调运动数据,混合模型的使用使得时间信号分解成为基础功能的叠加,提供了旨在保持信号基本特征的简明表述,提出了各种基础功能,包括计算机图形、人类运动科学、机器人学、控制和神经科学等不同研究领域的发展,将介绍辐射、伯恩斯坦和福里埃基本功能的应用实例,并附上相关的源代码,以熟悉这些技术。