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Dive into the research topics where Nikolaos Stamatopoulos is active.

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Featured researches published by Nikolaos Stamatopoulos.


international conference on document analysis and recognition | 2009

ICDAR 2009 Handwriting Segmentation Contest

Nikolaos Stamatopoulos; Basilis Gatos; Georgios Louloudis; Umapada Pal; Alireza Alaei

This paper presents the results of the Handwriting Segmentation Contest that was organized in the context of the ICDAR2013. The general objective of the contest was to use well established evaluation practices and procedures to record recent advances in off-line handwriting segmentation. Two benchmarking datasets, one for text line and one for word segmentation, were created in order to test and compare all submitted algorithms as well as some state-of-the-art methods for handwritten document image segmentation in realistic circumstances. Handwritten document images were produced by many writers in two Latin based languages (English and Greek) and in one Indian language (Bangla, the second most popular language in India). These images were manually annotated in order to produce the ground truth which corresponds to the correct text line and word segmentation results. The datasets of previously organized contests (ICDAR2007, ICDAR2009 and ICFHR2010 Handwriting Segmentation Contests) along with a dataset of Bangla document images were used as training dataset. Eleven methods are submitted in this competition. A brief description of the submitted algorithms, the evaluation criteria and the segmentation results obtained from the submitted methods are also provided in this manuscript.


international conference on document analysis and recognition | 2007

Handwriting Segmentation Contest

Basilios Gatos; Apostolos Antonacopoulos; Nikolaos Stamatopoulos

This paper presents the results of the handwriting segmentation contest that was organized in the context of ICDAR2007. The aim of this contest was to use well established evaluation practices and procedures in order to record recent advances in off-line handwriting segmentation. Two benchmarking datasets (one for text line and one for word segmentation) were used in a common evaluation platform in order to test and compare all submitted algorithms for handwritten document segmentation in realistic circumstances. The results of the evaluation of five algorithms submitted by participants as well as of two state-of-the-art algorithms are presented. The performance evaluation method is based on counting the number of matches between the text lines or words detected by the algorithms and the text line or words of the ground truth.


Image and Vision Computing | 2010

Segmentation of historical machine-printed documents using Adaptive Run Length Smoothing and skeleton segmentation paths

Nikos A. Nikolaou; Michael Makridis; Basilios Gatos; Nikolaos Stamatopoulos; Nikos Papamarkos

In this paper, we strive towards the development of efficient techniques in order to segment document pages resulting from the digitization of historical machine-printed sources. This kind of documents often suffer from low quality and local skew, several degradations due to the old printing matrix quality or ink diffusion, and exhibit complex and dense layout. To face these problems, we introduce the following innovative aspects: (i) use of a novel Adaptive Run Length Smoothing Algorithm (ARLSA) in order to face the problem of complex and dense document layout, (ii) detection of noisy areas and punctuation marks that are usual in historical machine-printed documents, (iii) detection of possible obstacles formed from background areas in order to separate neighboring text columns or text lines, and (iv) use of skeleton segmentation paths in order to isolate possible connected characters. Comparative experiments using several historical machine-printed documents prove the efficiency of the proposed technique.


IEEE Transactions on Image Processing | 2011

Goal-Oriented Rectification of Camera-Based Document Images

Nikolaos Stamatopoulos; Basilios Gatos; Ioannis Pratikakis; Stavros J. Perantonis

Document digitization with either flatbed scanners or camera-based systems results in document images which often suffer from warping and perspective distortions that deteriorate the performance of current OCR approaches. In this paper, we present a goal-oriented rectification methodology to compensate for undesirable document image distortions aiming to improve the OCR result. Our approach relies upon a coarse-to-fine strategy. First, a coarse rectification is accomplished with the aid of a computationally low cost transformation which addresses the projection of a curved surface to a 2-D rectangular area. The projection of the curved surface on the plane is guided only by the textual contents appearance in the document image while incorporating a transformation which does not depend on specific model primitives or camera setup parameters. Second, pose normalization is applied on the word level aiming to restore all the local distortions of the document image. Experimental results on various document images with a variety of distortions demonstrate the robustness and effectiveness of the proposed rectification methodology using a consistent evaluation methodology that encounters OCR accuracy and a newly introduced measure using a semi-automatic procedure.


document analysis systems | 2008

A Complete Optical Character Recognition Methodology for Historical Documents

Georgios Vamvakas; Basilios Gatos; Nikolaos Stamatopoulos; Stavros J. Perantonis

In this paper a complete OCR methodology for recognizing historical documents, either printed or handwritten without any knowledge of the font, is presented. This methodology consists of three steps: The first two steps refer to creating a database for training using a set of documents, while the third one refers to recognition of new document images. First, a pre-processing step that includes image binarization and enhancement takes place. At a second step a top-down segmentation approach is used in order to detect text lines, words and characters. A clustering scheme is then adopted in order to group characters of similar shape. This is a semi-automatic procedure since the user is able to interact at any time in order to correct possible errors of clustering and assign an ASCII label. After this step, a database is created in order to be used for recognition. Finally, in the third step, for every new document image the above segmentation approach takes place while the recognition is based on the character database that has been produced at the previous step.


international conference on document analysis and recognition | 2011

ICDAR 2011 Writer Identification Contest

Georgios Louloudis; Nikolaos Stamatopoulos; Basilios Gatos

ICDAR 2011 Writer Identification Contest is the first contest which is dedicated to record recent advances in the field of writer identification using established evaluation performance measures. The benchmarking dataset of the contest was created with the help of 26 writers that were asked to copy eight pages that contain text in several languages (English, French, German and Greek). This paper describes the contest details including the evaluation measures used as well as the performance of the 8 submitted methods along with a short description of each method.


International Journal on Document Analysis and Recognition | 2011

ICDAR2009 handwriting segmentation contest

Basilios Gatos; Nikolaos Stamatopoulos; Georgios Louloudis

ICDAR 2009 Handwriting Segmentation Contest was organized in the context of ICDAR2009 conference in order to record recent advances in off-line handwriting segmentation. The contest includes handwritten document images produced by many writers in several languages (English, French, German and Greek). These images are manually annotated in order to produce the ground truth which corresponds to the correct text line and word segmentation result. For the evaluation, a well-established approach is used based on counting the number of matches between the entities detected by the segmentation algorithm and the entities in the ground truth. This paper describes the contest details including the dataset, the ground truth and the evaluation criteria and presents the results of the 12 participating methods as well as of two state-of-the-art algorithms. A description of the winning algorithms is also given.


document analysis systems | 2008

A Two-Step Dewarping of Camera Document Images

Nikolaos Stamatopoulos; Basilios Gatos; Ioannis Pratikakis; Stavros J. Perantonis

Dewarping of camera document images has attracted a lot of interest over the last few years since warping not only reduces the document readability but also affects the accuracy of an OCR application. In this paper, a two-step approach for efficient dewarping of camera document images is presented. At a first step, a coarse dewarping is accomplished with the help of a transformation model which maps the projection of a curved surface to a 2D rectangular area. The projection of the curved surface is delimited by the two curved lines which fit the top and bottom text lines along with the two straight lines which fit to the left and right text boundaries. At a second step, fine dewarping is achieved based on words detection. All words are pose normalized guided by the lower and upper word baselines. Experimental results on several camera document images demonstrate the robustness and effectiveness of the proposed technique.


international conference on frontiers in handwriting recognition | 2012

ICFHR 2012 Competition on Writer Identification Challenge 1: Latin/Greek Documents

Georgios Louloudis; Basilios Gatos; Nikolaos Stamatopoulos

Writer identification is important for forensic analysis, helping experts to deliberate on the authenticity of documents. The general objective of the ICFHR 2012 Writer Identification Contest is to record recent advances in the field of writer identification using established evaluation performance measures. Challenge 1 of the contest deals specifically with Latin scripts. The benchmarking dataset of challenge 1 of the contest was created with the help of 100 writers that were asked to copy four parts of text in two languages (English and Greek). This paper describes the contest details for this challenge including the evaluation measures used as well as the performance of the seven submitted methods along with a short description of each method.


international conference on document analysis and recognition | 2013

ICDAR 2013 Competition on Writer Identification

Georgios Louloudis; Basilios Gatos; Nikolaos Stamatopoulos; A. Papandreou

Writer identification is important for forensic analysis, helping experts to deliberate on the authenticity of documents. The ICDAR2013 Competition on Writer Identification is part of a competition series (see also ICDAR2011 and ICFHR2012 Writer Identification Contests) which is dedicated to record recent advances in the field of writer identification for Latin scripts using established evaluation performance measures. The benchmarking dataset was created with the help of 250 writers that were asked to copy four parts of text in two Latin based languages (English and Greek). This paper describes the contest details including the evaluation measures used as well as the performance of the 12 submitted methods by 6 different groups along with a short description of each method.

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Georgios Louloudis

National and Kapodistrian University of Athens

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Basilios Gatos

Democritus University of Thrace

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Basilis Gatos

National and Kapodistrian University of Athens

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George Retsinas

National Technical University of Athens

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Giorgos Sfikas

University of Strasbourg

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Ioannis Pratikakis

Democritus University of Thrace

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A. Papandreou

National and Kapodistrian University of Athens

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A. Roniotis

National and Kapodistrian University of Athens

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