Journal of Imaging (Dec 2021)

Word Spotting as a Service: An Unsupervised and Segmentation-Free Framework for Handwritten Documents

  • Konstantinos Zagoris,
  • Angelos Amanatiadis,
  • Ioannis Pratikakis

DOI
https://doi.org/10.3390/jimaging7120278
Journal volume & issue
Vol. 7, no. 12
p. 278

Abstract

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Word spotting strategies employed in historical handwritten documents face many challenges due to variation in the writing style and intense degradation. In this paper, a new method that permits efficient and effective word spotting in handwritten documents is presented that relies upon document-oriented local features that take into account information around representative keypoints and a matching process that incorporates a spatial context in a local proximity search without using any training data. The method relies on a document-oriented keypoint and feature extraction, along with a fast feature matching method. This enables the corresponding methodological pipeline to be both effectively and efficiently employed in the cloud so that word spotting can be realised as a service in modern mobile devices. The effectiveness and efficiency of the proposed method in terms of its matching accuracy, along with its fast retrieval time, respectively, are shown after a consistent evaluation of several historical handwritten datasets.

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