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Multi-sensor data fusion for underwater target recognition under uncertainty

机译:多传感器数据融合在不确定性下的水下目标识别

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摘要

The nonlinear, dynamic and random in underwater environment result in uncertainty in process of underwater target recognition. In order to exactly recognize underwater target type under uncertainty through lots of corrupted dynamic sensory information comes from different underwater sensors, we propose a dynamic information fusion framework, which is based on discrete dynamic bayesian network (DDBN) that provide a coherent and unified hierarchical probabilistic framework to represent, integrate and infer various target characteristics from dynamic sensory information of different modalities. The proposed framework can provide dynamic, purposive and sufficing information fusion particularly well suited to the underwater target recognition under uncertainty. Furthermore, we enhance inference efficiency and allow computation at various levels of abstraction suitable for underwater target recognition by distributed computation. Finally, The experimental results demonstrate the utility of the proposed framework in efficiently modeling and inferring dynamic events.
机译:水下环境中的非线性,动态和随机性导致水下目标识别过程的不确定性。为了通过来自不同水下传感器的大量损坏的动态感官信息准确识别不确定性下的水下目标类型,我们提出了一种基于离散动态贝叶斯网络(DDBN)的动态信息融合框架,该框架提供了一致且统一的分层概率从不同形式的动态感官信息表示,整合和推断各种目标特征的框架。所提出的框架可以提供动态的,有目的的和充分的信息融合,特别适合不确定性下的水下目标识别。此外,我们提高了推理效率,并允许通过分布式计算在适合水下目标识别的各种抽象级别进行计算。最后,实验结果证明了所提出的框架在有效建模和推断动态事件中的实用性。

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