Support vector machines for handwritten numerical string recognition

作者: L.S. Oliveira , R. Sabourin

DOI: 10.1109/IWFHR.2004.99

关键词:

摘要: In this paper we discuss the use of SVMs to recognize handwritten numerical strings. Such a problem is more complex than recognizing isolated digits since one must deal with problems such as segmentation, overlapping, unknown number digits, etc. order perform our experiments, have used segmentation-based recognition system using heuristic over-segmentation. The contribution twofold. Firstly, demonstrate by experimentation that improve overall rates. Secondly, observe outliers over- and under-segmentation better multi-layer perceptron neural networks.

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