作者
Qin Tang, Jing Liang, Fangqi Zhu
发表日期
2023/6/27
期刊
IEEE Transactions on Geoscience and Remote Sensing
出版商
IEEE
简介
The problem of multisensors fusion target trajectory tracking under the Bayesian variational inference (VI) is to find the jointly accurate posterior distribution. In this article, a joint optimization method, called VINFNet, combining inference modeling and data-driven is proposed. The proposed VINFNet incorporates the respective advantages of state-space latent inference models and deep generative network that can explicitly model the physical process of target motion and construct complex posterior distributions of target trajectory through a series of invertible mappings. Specifically, the joint probabilistic representation of the multisensors latent variable is generated by VI, with the optimization on the evidence lower bound (ELBO) to guarantee convergence. However, finding the approximate posterior distribution of targets in VI is a crucially intractable problem. Therefore, a normalized flow generation model under a …
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