A Skeletonizing Reconfigurable Self-Organizing Model: Validation Through Text Recognition

作者:J. M. Alonso-Weber, A. Sanchis

摘要

Self Organizing Maps are able to develop topology preserving classifiers. In this work we propose a Reconfigurable Self Organizing Model, which combines this property with others related with the generation of sub-graphs of the Delaunay-triangulation, the possibility of generating elastic approximations and the capacity to reconfigure the models topological structure in a data driven way. These properties allow us to apply the model to the extraction of linear structures from one-dimensional curves and from two-dimensional figures (which can be dense or not). Skeletonization and recognition of machine printed text and handwritten numerals serve as a validation domain.

论文关键词:Neural networks, Self-organizing map, Machine printed text, Handwritten text recognition, Skeletonization

论文评审过程:

论文官网地址:https://doi.org/10.1007/s11063-011-9182-0