Multiscale skeletons by image foresting transform and its application to neuromorphometry

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摘要

The image foresting transform (IFT) reduces optimal image partition problems based on seed pixels to a shortest-path forest problem in a graph, whose solution can be obtained in linear time. Such a strategy has allowed a unified and efficient approach to the design of image processing operators, such as edge tracking, region growing, watershed transforms, distance transforms, and connected filters. This paper presents a fast and simple method based on the IFT to compute multiscale skeletons and shape reconstructions without border shifting. The method also generates one-pixel-wide connected skeletons and the skeleton by influence zones, simultaneously, for objects of arbitrary topologies. The results of the work are illustrated with respect to skeleton quality, execution time, and its application to neuromorphometry.

论文关键词:Multiscale skeletons,Shape filtering,Image analysis,Image foresting transform,Euclidean distance transform,Exact dilations,Label propagation,Neuromorphometry,Graph algorithms

论文评审过程:Received 6 December 2000, Accepted 23 July 2001, Available online 19 March 2002.

论文官网地址:https://doi.org/10.1016/S0031-3203(01)00148-0