基于粒子滤波的树突树自动重建研究

D. Myatt, S. Nasuto, S. Maybank
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引用次数: 10

摘要

三维重建的高尔基染色树突状树从一系列图像堆栈捕获的透射光明亮场显微镜进行了研究。讨论了对引导带滤波器的修改,使树结构可以递归地估计为一系列相连的片段。从鲁棒性和准确性两方面比较了自举粒子滤波器与差分进化算法的跟踪性能。发现粒子滤波方法对于考虑的数据具有显著的鲁棒性和准确性。
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Towards the Automatic Reconstruction of Dendritic Trees using Particle Filters
The 3D reconstruction of a Golgi-stained dendritic tree from a serial stack of images captured with a transmitted light bright-field microscope is investigated. Modifications to the boot-strap filter are discussed such that the tree structure may be estimated recursively as a series of connected segments. The tracking performance of the bootstrap particle filter is compared against Differential Evolution, an evolutionary global optimisation method, both in terms of robustness and accuracy. It is found that the particle filtering approach is significantly more robust and accurate for the data considered.
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