On the Blind Classification of Time Series

A. Bissacco, Stefano Soatto
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引用次数: 4

Abstract

We propose a cord distance in the space of dynamical models that takes into account their dynamics, including transients, output maps and input distributions. In data analysis applications, as opposed to control, the input is often not known and is inferred as part of the (blind) identification. So it is an integral part of the model that should be considered when comparing different time series. Previous work on kernel distances between dynamical models assumed either identical or independent inputs. We extend it to arbitrary distributions, highlighting connections with system identification, independent component analysis, and optimal transport. The increased modeling power is demonstrated empirically on gait classification from simple visual features.
时间序列的盲分类
我们提出了一个动态模型空间中的弦距,考虑了它们的动态,包括瞬态,输出映射和输入分布。在数据分析应用程序中,与控制相反,输入通常是未知的,并作为(盲)识别的一部分进行推断。因此,在比较不同的时间序列时,它是模型不可分割的一部分。以前关于动态模型之间核距离的研究假设了相同或独立的输入。我们将其扩展到任意分布,强调与系统识别,独立组件分析和最优传输的联系。通过简单的视觉特征对步态进行分类,证明了该方法提高了建模能力。
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