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Doctoral Thesis Defense: Mohammad Reza Ameri

July 26, 2018
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Speaker: Mohammad Reza Ameri

Supervisors: Drs. T. D. Bui, A. Fischer

Examining Committee: Drs. M. R. El-Sakka, N. Kharma, A. Krzyzak, C. Y. Suen, A. Sebak (Chair)

Title: Spotting Keywords in Handwritten Documents Using Hausdorff Edit Distance

Date: Thursday, July 26, 2018

Time: 10:00am

Place: EV 11.119

ABSTRACT

Keyword spotting has become a crucial topic in handwritten document recognition, by enabling content-based retrieval of scanned documents using search terms. With a query keyword, one can search and index the digitized handwriting which in turn facilitates understanding of manuscripts. Common automated techniques address the keyword spotting problem through statistical representations.

Structural representations such as graphs apprehend the complex structure of handwriting. However, they are rarely used, particularly for keyword spotting techniques, due to high computational costs. The graph edit distance, a powerful and versatile method for matching any type of labeled graph, has exponential time complexity to calculate the similarities of graphs. Hence, the use of graph edit distance is constrained to small size graphs.

The recently developed Hausdorff edit distance algorithm approximates the graph edit distance with quadratic time complexity by efficiently matching local substructures. This dissertation speculates using Hausdorff edit distance could be a promising alternative to other template-based keyword spotting approaches in term of computational time and accuracy. Accordingly, the core contribution of this thesis is investigation and development of a graph-based keyword spotting technique based on the Hausdorff edit distance algorithm.

The high representational power of graphs combined with the efficiency of the Hausdorff edit distance for graph matching is extensively evaluated with four types of handwriting graphs and four benchmark datasets. In a comprehensive experimental evaluation, we demonstrate a strong performance of the proposed graph-based method when compared with state of the art, both, concerning precision and speed.

Finally, within the industrial partnership with IMDS software, the topic of character recognition on the basis of higher order singular value decomposition has concluded to a research publication.




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