This paper is concerned with multi-modal data fusion (MMDF) under unexpected modality failures in nonlinear non-Gaussian dynamic processes. An efficient framework to tackle this problem is proposed. In particular, a notion termed modality "usefulness", which takes a value of 1 or 0, is used for indicating whether the observation of this modality is useful or not. For $n$ modalities involved, $2^n$ combinations of their "usefulness" values exist. Each combination defines one hypothetical model of the true data generative process. Then the problem of concern is formalized as a task of nonlinear non-Gaussian state filtering under model uncertainty, which is addressed by a dynamic model averaging based particle filter algorithm. Experimental results show that the proposed solution outperforms remarkably state-of-the-art methods. Code and data are available at https://github.com/robinlau1981/fusion.
翻译:本文涉及在非线性非Gausian动态进程中出现意外模式失败的多模式数据聚合(MMDF)问题。提出了解决这一问题的有效框架。特别是,一个称为“有用性”的概念,其价值为1或0,用于表明对这一模式的观察是否有用。对于所涉模式,存在2美元的“有用性”价值组合。每种组合都界定了真实数据基因化进程的一种假设模型。然后,将关注问题正式确定为在模型不确定性下非线性非Gausian国家过滤的任务,由动态模型平均粒子过滤算法处理。实验结果显示,拟议的解决方案明显超越了最先进的方法。代码和数据见https://github.com/robinlau1881/punation。