线性动力系统比较的初始状态不变Binet-Cauchy核

Rizwan Ahmed Chaudhry, R. Vidal
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引用次数: 1

摘要

线性动力系统(lds)已广泛应用于动态视觉现象的建模和识别,如人类活动、动态纹理、面部变形和唇部关节。在这些应用中,需要对从高维时间序列中识别出的大量lds进行比较。在过去的十年中,出现了三种计算效率高的距离:马丁距离[1],从可观测子空间之间的子空间角度获得的距离[2],以及从比奈-柯西核族获得的距离[3]。这项工作的主要贡献是表明了前两个距离是后一族的特殊情况,通过使比奈-柯西核对lds的初始状态不变而获得。我们还扩展了Binet-Cauchy核,以考虑动态过程的平均值。我们在几个数据集上评估了我们的指标的性能,并显示了类似或更好的人类活动识别结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Initial-state invariant Binet-Cauchy kernels for the comparison of Linear Dynamical Systems
Linear Dynamical Systems (LDSs) have been extensively used for modeling and recognition of dynamic visual phenomena such as human activities, dynamic textures, facial deformations and lip articulations. In these applications, a huge number of LDSs identified from high-dimensional time-series need to be compared. Over the past decade, three computationally efficient distances have emerged: the Martin distance [1], distances obtained from the subspace angles between observability subspaces [2], and distances obtained from the family of Binet-Cauchy kernels [3]. The main contribution of this work is to show that the first two distances are particular cases of the latter family obtained by making the Binet-Cauchy kernels invariant to the initial states of the LDSs. We also extend Binet-Cauchy kernels to take into account the mean of the dynamical process. We evaluate the performance of our metrics on several datasets and show similar or better human activity recognition results.
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