Single-sample writers -- "Document Filter" and their impacts on writer identification
Fabio Pinhelli, Alceu S. Britto Jr, Luiz S. Oliveira, Yandre M. G., Costa, Diego Bertolini

TL;DR
This paper investigates how using only a single sample per writer affects writer identification accuracy and introduces a 'document filter' protocol to improve evaluation reliability by preventing document-specific biases.
Contribution
It proposes the 'document filter' preprocessing technique to ensure fairer evaluation of writer identification systems by isolating writer-specific features from document-specific influences.
Findings
Recognition rate drops from 81.80% to 50.37% with document filter.
Single-sample databases can skew identification results.
The protocol improves the robustness of writer identification evaluations.
Abstract
The writing can be used as an important biometric modality which allows to unequivocally identify an individual. It happens because the writing of two different persons present differences that can be explored both in terms of graphometric properties or even by addressing the manuscript as a digital image, taking into account the use of image processing techniques that can properly capture different visual attributes of the image (e.g. texture). In this work, perform a detailed study in which we dissect whether or not the use of a database with only a single sample taken from some writers may skew the results obtained in the experimental protocol. In this sense, we propose here what we call "document filter". The "document filter" protocol is supposed to be used as a preprocessing technique, such a way that all the data taken from fragments of the same document must be placed either…
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Taxonomy
TopicsHandwritten Text Recognition Techniques · Advanced Image and Video Retrieval Techniques · Vehicle License Plate Recognition
