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  1. Home
  2. Indian Institute of Technology Madras
  3. Publication6
  4. Graph-based clustering for apictorial jigsaw puzzles of hand shredded content-less pages
 
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Graph-based clustering for apictorial jigsaw puzzles of hand shredded content-less pages

Date Issued
01-01-2017
Author(s)
Lalitha, K. S.
Sukhendu Das 
Indian Institute of Technology, Madras
Arun Menon 
Indian Institute of Technology, Madras
Koshy Varghese 
Indian Institute of Technology, Madras
DOI
10.1007/978-3-319-52503-7_11
Abstract
Reassembling hand shredded content-less pages is a challenging task, with applications in forensics and fun games. This paper proposes an efficient iterative framework to solve apictorial jigsaw puzzles of hand shredded content-less pages, using only the shape information. The proposed framework consists of four phases. In the first phase, normalized shape features are extracted from fragment contours. Then, for all possible matches between pairs of fragments transformation parameters for alignment of fragments and three goodness scores are estimated. In the third phase, incorrect matches are eliminated based on the score values. The alignments are refined by pruning the set of pairwise matched fragments. Finally, a modified graph-based framework for agglomerative clustering is used to globally reassemble the page(s). Experimental evaluation of our proposed framework on an annotated dataset of shredded documents shows the efficiency in the reconstruction of multiple contentless pages from arbitrarily torn fragments.
Volume
10127 LNCS
Subjects
  • Agglomerative cluster...

  • Content-less page rea...

  • Global reassembly

  • Partial contour match...

  • Shape features

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