Text Segmentation and Recognition in Complex Background Based on Markov Random Field
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Text characters embedded in images and video sequences represents a rich source of information for content-based indexing and retrieval applications. However, these text characters are difficult to be detected and recognized due to their various sizes, gra ...
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