An approach for numerical character recognition involving discriminating feature extraction and neural classification is proposed. The image of an unknown numeral is firstly preprocessed in order to guarantee the extraction of good features. The pre-processing operation consists of scale normalization, image thinning, elimination of spurious segments and image dilation. Then, some discriminating features are extracted from normalized image and used for the numeral classification. The classification process is divided into two steps. In the first step, the unknown numeral classification is based on some image's topological features and the image pixel distribution. In the second step of classification, Hopfield nets are used. Experimental te...
ABSTRACT Artificial neural networks are models inspired by human nervous system that is capable of ...
Intense activity and significant progress have characterized the last decade in the field of the rec...
In this paper, the use of Multi-Layer Perceptron (MLP) Neural Network model is proposed for recogniz...
This paper describes a method for numeral character recognition. Initially the image of an unknown n...
The wide range of shape variations for handwritten digits requires an adequate representation of the...
The present paper proposes a new approach of preprocessing for handwritten, printed and isolated num...
[[abstract]]Previous handwritten numeral recognition algorithms applied structural classification to...
Image processing is basically used to extract useful information from any input image. Recognition h...
AbstractA pattern recognition system based on the n-tuple technique is developed and evaluated for u...
[[abstract]]Structural classification recognizes handwritten numerals by extracting geometric primit...
[[abstract]]Structured classification has been adopted to recognize handwritten numerals by extracti...
International audienceRecognition of handwritten digits has been one of the first applications of ne...
In this paper we present a method for the recognition of handwritten digits and a practical implemen...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
The present work deals with the recognition of handwritten isolated numerals by utilizing a recent a...
ABSTRACT Artificial neural networks are models inspired by human nervous system that is capable of ...
Intense activity and significant progress have characterized the last decade in the field of the rec...
In this paper, the use of Multi-Layer Perceptron (MLP) Neural Network model is proposed for recogniz...
This paper describes a method for numeral character recognition. Initially the image of an unknown n...
The wide range of shape variations for handwritten digits requires an adequate representation of the...
The present paper proposes a new approach of preprocessing for handwritten, printed and isolated num...
[[abstract]]Previous handwritten numeral recognition algorithms applied structural classification to...
Image processing is basically used to extract useful information from any input image. Recognition h...
AbstractA pattern recognition system based on the n-tuple technique is developed and evaluated for u...
[[abstract]]Structural classification recognizes handwritten numerals by extracting geometric primit...
[[abstract]]Structured classification has been adopted to recognize handwritten numerals by extracti...
International audienceRecognition of handwritten digits has been one of the first applications of ne...
In this paper we present a method for the recognition of handwritten digits and a practical implemen...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
The present work deals with the recognition of handwritten isolated numerals by utilizing a recent a...
ABSTRACT Artificial neural networks are models inspired by human nervous system that is capable of ...
Intense activity and significant progress have characterized the last decade in the field of the rec...
In this paper, the use of Multi-Layer Perceptron (MLP) Neural Network model is proposed for recogniz...