作者
Xiongjie Chen, Hao Wen, Yunpeng Li
发表日期
2021/11/1
研讨会论文
2021 IEEE 24th International Conference on Information Fusion (FUSION)
页码范围
1-6
出版商
IEEE
简介
Differentiable particle filters provide a flexible mechanism to adaptively train dynamic and measurement models by learning from observed data. However, most existing differentiable particle filters are within the bootstrap particle filtering framework and fail to incorporate the information from latest observations to construct better proposals. In this paper, we utilize conditional normalizing flows to construct proposal distributions for differentiable particle filters, enriching the distribution families that the proposal distributions can represent. In addition, normalizing flows are incorporated in the construction of the dynamic model, resulting in a more expressive dynamic model. We demonstrate the performance of the proposed conditional normalizing flow-based differentiable particle filters in a visual tracking task.
引用总数
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X Chen, H Wen, Y Li - 2021 IEEE 24th International Conference on …, 2021