Litcius/Paper detail

Intra-Variable Handwriting Inspection Reinforced With Idiosyncrasy Analysis

Chandranath Adak, Bidyut B. Chaudhuri, Chin-Teng Lin, Michael Blumenstein

2020IEEE Transactions on Information Forensics and Security12 citationsDOIOpen Access PDF

Abstract

In this paper, we work on intra-variable handwriting, where the writing samples of an individual can vary significantly. Such within-writer variation throws a challenge for automatic writer inspection, where the state-of-the-art methods do not perform well. To deal with intra-variability, we analyze the idiosyncrasy in individual handwriting. We identify/verify the writer from highly idiosyncratic text-patches. Such patches are detected using a deep recurrent reinforcement learning-based architecture. An idiosyncratic score is assigned to every patch, which is predicted by employing deep regression analysis. For writer identification, we propose a deep neural architecture, which makes the final decision by the idiosyncratic score-induced weighted average of patch-based decisions. For writer verification, we propose two algorithms for patch-fed deep feature aggregation, which assist in authentication using a triplet network. The experiments were performed on two databases, where we obtained encouraging results.

Topics & Concepts

HandwritingComputer scienceArtificial intelligenceIdiosyncrasyVariation (astronomy)Feature (linguistics)Feature extractionAuthentication (law)Natural language processingHandwriting recognitionPattern recognition (psychology)Artificial neural networkDeep learningMachine learningRegressionSpeech recognitionDeep neural networksWork (physics)Task analysisFeature engineeringRegression analysisHandwritten Text Recognition TechniquesImage and Object Detection TechniquesAdvanced Neural Network Applications