In this paper, the segmentation of off-line cursive hand- written text lines into individual words is investigated. The problem is considered as a text line recognition task, adapted to the characteristics of segmentation. That is, at a certain position of a text line, it has to be decided whether the considered position belongs to a letter of a word, or to a space between two words. Thus the text line needs to be recognized as a sequence of non-space and space charac- ters. For this purpose, three different recognizers based on Hidden Markov Models are designed, and results of writer- dependent as well as writer-independent experiments are reported in the paper.
Citation:
F. Luthy, T. Varga, H. Bunke, "Using Hidden Markov Models as a Tool for Handwritten Text Line Segmentation," icdar, vol. 1, pp.8-, Ninth International Conference on Document Analysis and Recognition (ICDAR 2007) Vol 1, 2007