Deep Recognition-based Character Segmentation in Handwritten Syriac Manuscripts

2020 Tenth International Conference on Image Processing Theory, Tools and Applications (IPTA)(2020)

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摘要
Ancient Syriac manuscripts represent a valuable cultural heritage for a large community, mainly in the region of the Middle East. Digitization of these manuscripts plays a major role in preserving this heritage and making it publicly available without the need to access the original paper versions. In this context, this paper presents a recognition-based algorithm for character segmentation in handwritten Syriac manuscripts. A convolutional neural network is used as a classifier for character recognition in a variable-size sliding window that spans individual word images. The classifier also provides likelihood values that are then used to determine suitable segmentation points for individual characters. Since the classifier is a core component of the segmentation algorithm, the proposed approach allows for joint character segmentation and recognition, thus providing a means for automated document indexing and content-based search and retrieval.
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关键词
character segmentation,cultural heritage,document analysis,Syriac language,text recognition
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