This paper investigates and compares between applying the algorithms of Support Vector Machine (SVM), Principal Component Analysis (PCA), Individual Principal Component Analysis (iPCA), Linear Discriminant Analysis (LDA), and Single-Nearest-Neighbor Method (1-NNM) to distorted-character recognition. Applying SVM achieves a classification error rate of 2.15% on the Letter-Image Dataset [Frey and Slate 1991]. This error rate is statistically comparable to the best number in the literature on this dataset that the authors are aware of, which is 2%. This was achieved by a fully connected MLP neural network with adaboosting, where training was performed on 20 machines [Schwenk and Bengio 1997]. However, using SVM on a single machine, takes less ...
In this paper, an attempt is made to develop off-line recognition strategies for the isolated Handwr...
In this paper, our main aim is to show a better dimension reduction process of high dimensional imag...
Abstract:- Object recognition is an important task in many image processing and pattern recognition ...
The different applications for optical character recognition in real-time applications will most lik...
In this project, two learning schemes had been tested and verified, in the recognition unit within t...
International audienceOptical Character Recognition (OCR) systems have been designed to operate on t...
Microsoft, Motorola, Siemens, Hitachi, IAPR, NICI, IUF This paper describes a two-stage classificati...
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
This paper describes a two-stage classification method for (1) classification of isolated characters...
Since the performance of a character recognition system is mainly determined by the classifier, we i...
Recognition of bilingual script in an image of a document page is of primary importance for a system...
The most efficient and beneficial mechanism to the feature of extracting data from an image, has bee...
Powerful classifiers as neural networks have long been used to recognise images; these images might ...
Artificial Neural Net Models have been studied for many years in hope of achieving human-like perfor...
This study aims to analyze the effects of noise, image filtering, and edge detection techniques in t...
In this paper, an attempt is made to develop off-line recognition strategies for the isolated Handwr...
In this paper, our main aim is to show a better dimension reduction process of high dimensional imag...
Abstract:- Object recognition is an important task in many image processing and pattern recognition ...
The different applications for optical character recognition in real-time applications will most lik...
In this project, two learning schemes had been tested and verified, in the recognition unit within t...
International audienceOptical Character Recognition (OCR) systems have been designed to operate on t...
Microsoft, Motorola, Siemens, Hitachi, IAPR, NICI, IUF This paper describes a two-stage classificati...
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
This paper describes a two-stage classification method for (1) classification of isolated characters...
Since the performance of a character recognition system is mainly determined by the classifier, we i...
Recognition of bilingual script in an image of a document page is of primary importance for a system...
The most efficient and beneficial mechanism to the feature of extracting data from an image, has bee...
Powerful classifiers as neural networks have long been used to recognise images; these images might ...
Artificial Neural Net Models have been studied for many years in hope of achieving human-like perfor...
This study aims to analyze the effects of noise, image filtering, and edge detection techniques in t...
In this paper, an attempt is made to develop off-line recognition strategies for the isolated Handwr...
In this paper, our main aim is to show a better dimension reduction process of high dimensional imag...
Abstract:- Object recognition is an important task in many image processing and pattern recognition ...