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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
71

The role of the Elementary Perceiver and Memorizer (EPAM) in optical character recognition (OCR)

Radvar-Zanganeh, Siasb. January 1994 (has links)
Thesis (M.Comp. Sc.)--Dept. of Computer Science, Concordia University, 1995. / Includes bibliographical references (leaves 119-128) and index. Available also on the Internet.
72

Word level training of handwritten word recognition systems /

Chen, Wen-Tsong. January 2000 (has links)
Thesis (Ph. D.)--University of Missouri-Columbia, 2000. / Typescript. Vita. Includes bibliographical references (leaves 96-109). Also available on the Internet.
73

Μελέτη, σχεδιασμός και υλοποίηση αλγορίθμων εντοπισμού θέσης και αναγνώρισης χαρακτήρων σε τυπωμένες εικόνες

Παπαθανασίου, Ανδρέας 20 October 2010 (has links)
Για τη παρούσα εργασία πραγματοποιήσαμε μια αναλυτική περιγραφή της δομής ενός συστήματος οπτικής αναγνώρισης χαρακτήρα και των μεθόδων που έχουν χρησιμοποιηθεί από τους διάφορους ερευνητές. Σταθήκαμε περισσότερο στην θεωρία των Κυματιδίων (Wavelets) και των Τεχνητών Νευρωνικών Δικτύων. Στη συνέχεια υλοποιήσαμε ένα σύστημα Οπτικής Αναγνώρισης Χαρακτήρα σε περιβάλλον Matlab χρησιμοποιώντας wavelets για την εξαγωγή παραμέτρων και Radial Basis Function (RBF) νευρωνικό δίκτυο. Στο πείραμα που πραγματοποιησήσαμε μετρήσαμε την αποδοτικότητα του συστήματος μας για εξαγωγή παραμέτρων με δύο διαφορετικά wavelets (sym4 και Meyer) και αποδείξαμε πως το δεύτερο έχει πολύ καλύτερη επίδοση. / Dirscription of an optical character recognition system and the methods that are used. Creation of an ocr system using wavelets for feature extraction and neural networks for the recognition.
74

Utilize OCR text to extract receipt data and classify receipts with common Machine Learning algorithms / Använda OCR-text för att extrahera kvittodata och klassificera kvitton med vanliga maskininlärnings algoritmer

Odd, Joel, Theologou, Emil January 2018 (has links)
This study investigated if it was feasible to use machine learning tools on OCR extracted text data to classify receipts and extract specific data points. Two OCR tools were evaluated, the first was Azure Computer Vision API and the second was Google Drive REST Api, where Google Drive REST Api was the main OCR tool used in the project because of its impressive performance. The classification task mainly tried to predict which of five given categories the receipts belongs to, and also a more challenging task of predicting specific subcategories inside those five larger categories. The data points we where trying to extract was the date of purchase on the receipt and the total price of the transaction. The classification was mainly done with the help of scikit-learn, while the extraction of data points was achieved by a simple custom made N-gram model. The results were promising with about 94 % cross validation score for classifying receipts based on category with the help of a LinearSVC classifier. Our custom model was successful in 72 % of cases for the price data point while the results for extracting the date was less successful with an accuracy of 50 %, which we still consider very promising given the simplistic nature of the custom model.
75

OCR of dot peen markings : with deep learning and image analysis

Edvartsen, Hannes January 2018 (has links)
A way to follow products through the chain of production is important in the process industry and it is often solved by marking them with serial numbers. In some cases permanent markings such as dot peen marking is required. To ensure profitability in the industry and reduce errors, these markings must be read automatically. Automatic reading of dot peen markings using a camera can be hard since there is low contrast between the background and the numbers, the background can be uneven and different illuminations can affect the visibility. In this work, two different systems are implemented and evaluated to assess the possibility of developing a robust system. One system uses image analysis to segment the numbers before classifying them. The other system uses the recent advances in deep learning for object detection. Both implementations are shown to work in near real-time on a cpu. The deep learning object detection approach was able to classify all numbers correct in a image 60% of the time, while the other approach only succeeded in 20% of the time.
76

Informatisation d'une forme graphique des Langues des Signes : application au système d'écriture SignWriting / Informatisation of a graphic form of sign languages : application to SignWriting

Borgia, Fabrizio 30 March 2015 (has links)
Les recherches et les logiciels présentés dans cette étude s'adressent à une importante minorité au sein de notre société, à savoir la communauté des sourdes. De nombreuses recherches démontrent que les sourdes se heurtent à de grosses difficultés avec la langue vocale, ce qui explique pourquoi la plu- part d'entre eux préfère communiquer dans la langue des signes. Du point de vue des sciences de l'information, les LS constituent un groupe de minorités linguistiques peu représentées dans l'univers du numérique. Et, de fait, les sourds sont les sujets les plus touchés par la fracture numérique. Cette étude veut donc être une contribution pour tenter de resserrer cette fracture numérique qui pénalise les sourdes. Pour ce faire, nous nous sommes principalement concentrés sur l'informatisation de SignWriting, qui constitue l'un des systèmes les plus prometteurs pour écrire la LS. / The studies and the software presented in this work are addressed to a relevant minority of our society, namely deaf people. Many studies demonstrate that, for several reasons, deaf people experience significant difficulties in exploiting a Vocal Language (VL English, Chinese, etc.). In fact, many of them prefer to communicate using Sign Language (SL). As computer scientists, we observed that SLs are currently a set of underrepresented linguistic minorities in the digital world. As a matter of fact, deaf people are among those individuals which are mostly affected by the digital divide. This work is our contribution towards leveling the digital divide affecting deaf people. In particular, we focused on the computer handling of SignWriting, which is one of the most promising systems devised to write SLs.
77

Genetically modelled Artificial Neural Networks for Optical Character Recognition : An evaluation of chromosome encodings

Lindqvist, Emil Gedda & Kalle January 2011 (has links)
Context. Custom solutions to optical character recognition problems are able to reach higher recognition rates then a generic solution by their ability to exploiting the limitations in the problem domain. Such solutions can be generated with genetic algorithms. This thesis evaluates two different chromosome encodings on an optical character recognition problem with a limited problem domain. Objectives. The main objective for this study is to compare two different chromosome encodings used in a genetic algorithm generating neural networks for an optical character recognition problem to evaluate both the impact on the evolution of the network as well as the networks produced. Methods. A systematic literature review was conducted to find genetic chromosome encodings previously used on similar problem. One well documented chromosome encoding was found. We implemented the found hromosome ncoding called binary, as well as a modified version called weighted binary, which intended to reduce the risk of bad mutations. Both chromosome encodings were evaluated on an optical character recognition problem with a limited problem domain. The experiment was run with two different population sizes, ten and fifty. A baseline for what to consider a good solution on the problem was acquired by implementing a template matching classifier on the same dataset. Template matching was chosen since it is used in existing solutions on the same problem. Results. Both encodings were able to reach good results compared to the baseline. The weighted binary encoding was able to reduce the problem with bad mutations which occurred in the binary encoding. However it also had a negative impact on the ability of finding the best networks. The weighted binary encoding was more prone to enbreeding with a small population than the binary encoding. The best network generated using the binary encoding had a 99.65% recognition rate while the best network generated by the weighted binary encoding had a 99.55% recognition rate. Conclusions. We conclude that it is possible to generate many good solutions for an optical character problem with a limited problem domain. Even though it is possible to reduce the risk of bad mutations in a genetic lgorithm generating neural networks used for optical character recognition by designing the chromosome encoding, it may be more harmful than not doing it.
78

Empirical Evaluation of Approaches for Digit Recognition

Joosep, Henno January 2015 (has links)
Optical Character Recognition (OCR) is a well studied subject involving variousapplication areas. OCR results in various limited problem areas are promising,however building highly accurate OCR application is still problematic in practice.This thesis discusses the problem of recognizing and confirming Bingo lottery numbersfrom a real lottery field, and a prototype for Android phone is implementedand evaluated. An OCR library Tesseract and two Artificial Neural Network (ANN)approaches are compared in an experiment and discussed. The results show thattraining a neural network for each number gives slightly higher results than Tesseract.
79

Recognition of unconstrained handwritten digits with neural networks

De Jaeger, André 19 November 2014 (has links)
D.Ing. (Electrical and Electronic ) / This thesis describes a neural network based system for the classification of handwritten digits as found on real-life mail pieces. The proposed neural network uses a modular architecture which lends itself to parallel implementation. This modular architecture is shown to produce adequate performance levels while significantly reducing the required training time. The aim of the system is not only to achieve a high recognition performance, but also to gain more insight into the functioning of the neural networks. This is achieved by using separate feature extraction and classification stages. The output of the feature extraction stage gives a good indication of the final performance level of the classifier, even before training. The need for an optimal feature set is expressed to elevate the performance levels even further.
80

Multimodal verification of identity for a realistic access control application

Denys, Nele 18 November 2008 (has links)
D. Ing. / This thesis describes a real world application in the field of pattern recognition. License plate recognition and face recognition algorithms are combined to implement automated access control at the gates of RAU campus. One image of the license plate and three images of the driver’s face are enough to check if the person driving a particular car into campus is the same as the person driving this car out. The license plate recognition module is based on learning vector quantization and performs well enough to be used in a realistic environment. The face recognition module is based on the Bayes rule and while performing satisfactory, extensive research is still necessary before this system can be implemented in real life. The main reasons for failure of the system were identified as the variable lighting and insufficient landmarks for effective warping.

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