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Data assimilation with state alignment using high-level image structures detection

机译:使用高级图像结构检测进行状态对齐的数据同化

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Sequential and variational assimilation methods allow tracking physical states using dynamic prior together with external observation of the studied system. However, when dense image satellite observations are available, such approaches realize a correction of the amplitude of the different state values but do not incorporate the spatial errors of structure positions. In the case of the position of a vortex, for example, when there is misfit between state and observation, the processes can be long to converge and even diverge when high dimensional state spaces are treated with few iterations of the assimilation methods as it is the case in operational algorithms. In this paper, we tackle this issue by proposing an alignment method based on modern object detection methods that uses visual correspondences between the physical state model and the structural information given by a sequence of image observing the phenomena.
机译:顺序和变体同化方法允许使用动态先验和研究系统的外部观察来跟踪物理状态。但是,当可获得密集的图像卫星观测结果时,此类方法可实现对不同状态值幅度的校正,但不包含结构位置的空间误差。例如,在涡旋位置的情况下,当状态与观测值之间不匹配时,当用很少的同化方法迭代来处理高维状态空间时,过程可能会收敛很长,甚至发散。运算算法中的案例。在本文中,我们通过提出一种基于现代对象检测方法的对齐方法来解决此问题,该方法使用物理状态模型与由一系列观察现象的图像给出的结构信息之间的视觉对应关系。

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