BMVC IndexVisual Learning of Weight from Shape Using Support Vector MachinesComputer Vision: AnalysisORASSYLL: Object Recognition with Autonomously Learned and Sparse Symbolic Representations Based on Local Line Detectors

Writer Identification from Non-uniformly Skewed Handwriting Images
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H. E. S. Said, G. S. Peake, T. N. Tan, K. D. Baker

Department of Computer Science
University of Reading
Reading RG6 6AY UK
National Laboratory of Pattern Recognition
Institute of Automation
Chinese Academy of Sciences
Beijing P. R. China

Contact: H.E.S.Said@reading.ac.uk

Abstract

Many techniques have been reported for handwriting-based writer identification. Most such techniques assume that the written text is fixed (e.g., in signature verification). In this paper we attempt to eliminate this assumption by presenting a novel algorithm for automatic text-independent writer identification from non-uniformly skewed handwriting images. Given that the handwriting of different people is often visually distinctive, we take a global approach based on texture analysis, where each writers' handwriting is regarded as a different texture. In principle this allows us to apply any standard texture recognition algorithm for the task (e.g., the multi-channel Gabor filtering technique). Results of 96.0% accuracy on the classification of 150 test documents from 10 writers are very promising. The method is shown to be robust to noise and contents.

Keywords: Writer Identification, Skew Detection, Gabor Filters, Document Analysis
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BMVC IndexVisual Learning of Weight from Shape Using Support Vector MachinesComputer Vision: AnalysisORASSYLL: Object Recognition with Autonomously Learned and Sparse Symbolic Representations Based on Local Line Detectors

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