Article ID Journal Published Year Pages File Type
536006 Pattern Recognition Letters 2011 11 Pages PDF
Abstract

This paper describes two approaches for Amharic word recognition in unconstrained handwritten text using HMMs. The first approach builds word models from concatenated features of constituent characters and in the second method HMMs of constituent characters are concatenated to form word model. In both cases, the features used for training and recognition are a set of primitive strokes and their spatial relationships. The recognition system does not require segmentation of characters but requires text line detection and extraction of structural features, which is done by making use of direction field tensor. The performance of the recognition system is tested by a dataset of unconstrained handwritten documents collected from various sources, and promising results are obtained.

Research highlights► Two HMM-based models for Amharic word recognition in handwritten text are proposed. ► A set of primitive strokes and their spatial relationships are used as features. ► Feature-level concatenation performs better than HMM-level concatenation of characters.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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