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Dive into the research topics where Ioannis Pratikakis is active.

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Featured researches published by Ioannis Pratikakis.


Pattern Recognition | 2006

Adaptive degraded document image binarization

Basilios Gatos; Ioannis Pratikakis; Stavros J. Perantonis

This paper presents a new adaptive approach for the binarization and enhancement of degraded documents. The proposed method does not require any parameter tuning by the user and can deal with degradations which occur due to shadows, non-uniform illumination, low contrast, large signal-dependent noise, smear and strain. We follow several distinct steps: a pre-processing procedure using a low-pass Wiener filter, a rough estimation of foreground regions, a background surface calculation by interpolating neighboring background intensities, a thresholding by combining the calculated background surface with the original image while incorporating image up-sampling and finally a post-processing step in order to improve the quality of text regions and preserve stroke connectivity. After extensive experiments, our method demonstrated superior performance against four (4) well-known techniques on numerous degraded document images.


international conference on document analysis and recognition | 2009

ICDAR 2009 Document Image Binarization Contest (DIBCO 2009)

Ioannis Pratikakis; Basilios Gatos; Konstantinos Ntirogiannis

DIBCO 2009 is the first International Document Image Binarization Contest organized in the context of ICDAR 2009 conference. The general objective of the contest is to identify current advances in document image binarization using established evaluation performance measures. This paper describes the contest details including the evaluation measures used as well as the performance of the 43 submitted methods along with a short description of each method.


Pattern Recognition | 2007

Efficient 3D shape matching and retrieval using a concrete radialized spherical projection representation

Panagiotis Papadakis; Ioannis Pratikakis; Stavros J. Perantonis; Theoharis Theoharis

We present a 3D shape retrieval methodology based on the theory of spherical harmonics. Using properties of spherical harmonics, scaling and axial flipping invariance is achieved. Rotation normalization is performed by employing the continuous principal component analysis along with a novel approach which applies PCA on the face normals of the model. The 3D model is decomposed into a set of spherical functions which represents not only the intersections of the corresponding surface with rays emanating from the origin but also points in the direction of each ray which are closer to the origin than the furthest intersection point. The superior performance of the proposed methodology is demonstrated through a comparison against state-of-the-art approaches on standard databases.


Pattern Recognition | 2009

Text line and word segmentation of handwritten documents

Georgios Louloudis; Basilios Gatos; Ioannis Pratikakis; Constantin Halatsis

In this paper, we present a segmentation methodology of handwritten documents in their distinct entities, namely, text lines and words. Text line segmentation is achieved by applying Hough transform on a subset of the document image connected components. A post-processing step includes the correction of possible false alarms, the detection of text lines that Hough transform failed to create and finally the efficient separation of vertically connected characters using a novel method based on skeletonization. Word segmentation is addressed as a two class problem. The distances between adjacent overlapped components in a text line are calculated using the combination of two distance metrics and each of them is categorized either as an inter- or an intra-word distance in a Gaussian mixture modeling framework. The performance of the proposed methodology is based on a consistent and concrete evaluation methodology that uses suitable performance measures in order to compare the text line segmentation and word segmentation results against the corresponding ground truth annotation. The efficiency of the proposed methodology is demonstrated by experimentation conducted on two different datasets: (a) on the test set of the ICDAR2007 handwriting segmentation competition and (b) on a set of historical handwritten documents.


International Journal of Computer Vision | 2010

PANORAMA: A 3D Shape Descriptor Based on Panoramic Views for Unsupervised 3D Object Retrieval

Panagiotis Papadakis; Ioannis Pratikakis; Theoharis Theoharis; Stavros J. Perantonis

We present a novel 3D shape descriptor that uses a set of panoramic views of a 3D object which describe the position and orientation of the object’s surface in 3D space. We obtain a panoramic view of a 3D object by projecting it to the lateral surface of a cylinder parallel to one of its three principal axes and centered at the centroid of the object. The object is projected to three perpendicular cylinders, each one aligned with one of its principal axes in order to capture the global shape of the object. For each projection we compute the corresponding 2D Discrete Fourier Transform as well as 2D Discrete Wavelet Transform. We further increase the retrieval performance by employing a local (unsupervised) relevance feedback technique that shifts the descriptor of an object closer to its cluster centroid in feature space. The effectiveness of the proposed 3D object retrieval methodology is demonstrated via an extensive consistent evaluation in standard benchmarks that clearly shows better performance against state-of-the-art 3D object retrieval methods.


international conference on frontiers in handwriting recognition | 2010

H-DIBCO 2010 - Handwritten Document Image Binarization Competition

Ioannis Pratikakis; Basilios Gatos; Konstantinos Ntirogiannis

H-DIBCO 2010 is the International Document Image Binarization Contest which is dedicated to handwritten document images organized in conjunction with ICFHR 2010 conference. The general objective of the contest is to identify current advances in handwritten document image binarization using meaningful evaluation performance measures. This paper reports on the contest details including the evaluation measures used as well as the performance of the 17 submitted methods along with a short description of each method.


Computer-aided Design and Applications | 2007

3D Mesh Segmentation Methodologies for CAD applications

Alexander Agathos; Ioannis Pratikakis; Stavros J. Perantonis; Nikolaos Sapidis; Philip Azariadis

D mesh segmentation is a fundamental process for Digital Shape Reconstruction in a variety of applications including Reverse Engineering, Medical Imaging, etc. It is used to provide a high level representation of the raw 3D data which is required for CAD, CAM and CAE. In this paper, we present an exhaustive overview of 3D mesh segmentation methodologies examining their suitability for CAD models. In particular, a classification of the various methods is given based on their corresponding underlying fundamental methodology concept as well as on the distinct criteria and features used in the segmentation process.


International Journal on Document Analysis and Recognition | 2007

Keyword-guided word spotting in historical printed documents using synthetic data and user feedback

Thomas Konidaris; Basilios Gatos; Kostas Ntzios; Ioannis Pratikakis; Sergios Theodoridis; Stavros J. Perantonis

In this paper, we propose a novel technique for word spotting in historical printed documents combining synthetic data and user feedback. Our aim is to search for keywords typed by the user in a large collection of digitized printed historical documents. The proposed method consists of the following stages: (1) creation of synthetic image words; (2) word segmentation using dynamic parameters; (3) efficient feature extraction for each word image and (4) a retrieval procedure that is optimized by user feedback. Experimental results prove the efficiency of the proposed approach.


document analysis systems | 2004

An Adaptive Binarization Technique for Low Quality Historical Documents

Basilios Gatos; Ioannis Pratikakis; Stavros J. Perantonis

Historical document collections are a valuable resource for human history. This paper proposes a novel digital image binarization scheme for low quality historical documents allowing further content exploitation in an efficient way. The proposed scheme consists of five distinct steps: a pre-processing procedure using a low-pass Wiener filter, a rough estimation of foreground regions using Niblack’s approach, a background surface calculation by interpolating neighboring background intensities, a thresholding by combining the calculated background surface with the original image and finally a post-processing step in order to improve the quality of text regions and preserve stroke connectivity. The proposed methodology works with great success even in cases of historical manuscripts with poor quality, shadows, nonuniform illumination, low contrast, large signal- dependent noise, smear and strain. After testing the proposed method on numerous low quality historical manuscripts, it has turned out that our methodology performs better compared to current state-of-the-art adaptive thresholding techniques.


Pattern Recognition | 2008

Text line detection in handwritten documents

Georgios Louloudis; Basilios Gatos; Ioannis Pratikakis; Constantin Halatsis

In this paper, we present a new text line detection method for handwritten documents. The proposed technique is based on a strategy that consists of three distinct steps. The first step includes image binarization and enhancement, connected component extraction, partitioning of the connected component domain into three spatial sub-domains and average character height estimation. In the second step, a block-based Hough transform is used for the detection of potential text lines while a third step is used to correct possible splitting, to detect text lines that the previous step did not reveal and, finally, to separate vertically connected characters and assign them to text lines. The performance evaluation of the proposed approach is based on a consistent and concrete evaluation methodology.

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Dive into the Ioannis Pratikakis's collaboration.

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Basilios Gatos

Democritus University of Thrace

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Theoharis Theoharis

Norwegian University of Science and Technology

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Konstantinos Sfikas

National and Kapodistrian University of Athens

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Hichem Sahli

Vrije Universiteit Brussel

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Basilis Gatos

National and Kapodistrian University of Athens

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Konstantinos Zagoris

Democritus University of Thrace

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Michalis A. Savelonas

Democritus University of Thrace

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Iris Vanhamel

Vrije Universiteit Brussel

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Konstantinos Ntirogiannis

National and Kapodistrian University of Athens

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