this paper a methodology for feature selection for the handwritten digit string recognition is proposed. Its novelty lies in the use of a multiobjective genetic algorithm where sensitivity analysis and neural network are employed to allow the use of a representative database to evaluate fitness and the use of a validation database to identify the subsets of selected features that provide a good generalization. Some advantages of this approach include the ability to accommodate multiple criteria such as number of features and accuracy of the classifier, as well as the capacity to deal with huge databases in order to adequately represent the pattern recognition problem. Comprehensive experiments on the NIST SD19 demonstrate the feasib...
2015 IEEE Congress on Evolutionary Computation (CEC), Sendai, Japan, 25-28 May 2015A training protoc...
Pattern recognition plays a vital role due to demand in artificial intelligence in practical problem...
This paper proposes a neural network weights and topology optimization using genetic evolution and t...
Microsoft, Motorola, Siemens, Hitachi, IAPR, NICI, IUF A feature selection method using genetic algo...
Handwritten Character Recognition is well known problem which has many real world applications. Many...
For recognition in image data, the large number of features can cause an unnecessary increase in the...
Classifier combination is a powerful paradigm to deal with difficult pattern classification problems...
An automatic recognition of online handwritten text has been an on-going research problem for nearly...
Character Recognition has been one of the most intensive research during the last few decades becaus...
The aim of this paper is to introduce a novel technique for handwritten digit recognition based on g...
In this paper we present two algorithms for selecting prototypes from the given training data set. H...
This paper presents a genetic algorithm-based approach that integrates a radial basis function kerne...
Character Recognition has become an intensive research areas during the last few decades because of ...
This paper addresses the use of multi-objective optimization techniques for optimal zonin...
Aiming at a high recognition rate and a low error rate at the same time, a cascade ensemble classifi...
2015 IEEE Congress on Evolutionary Computation (CEC), Sendai, Japan, 25-28 May 2015A training protoc...
Pattern recognition plays a vital role due to demand in artificial intelligence in practical problem...
This paper proposes a neural network weights and topology optimization using genetic evolution and t...
Microsoft, Motorola, Siemens, Hitachi, IAPR, NICI, IUF A feature selection method using genetic algo...
Handwritten Character Recognition is well known problem which has many real world applications. Many...
For recognition in image data, the large number of features can cause an unnecessary increase in the...
Classifier combination is a powerful paradigm to deal with difficult pattern classification problems...
An automatic recognition of online handwritten text has been an on-going research problem for nearly...
Character Recognition has been one of the most intensive research during the last few decades becaus...
The aim of this paper is to introduce a novel technique for handwritten digit recognition based on g...
In this paper we present two algorithms for selecting prototypes from the given training data set. H...
This paper presents a genetic algorithm-based approach that integrates a radial basis function kerne...
Character Recognition has become an intensive research areas during the last few decades because of ...
This paper addresses the use of multi-objective optimization techniques for optimal zonin...
Aiming at a high recognition rate and a low error rate at the same time, a cascade ensemble classifi...
2015 IEEE Congress on Evolutionary Computation (CEC), Sendai, Japan, 25-28 May 2015A training protoc...
Pattern recognition plays a vital role due to demand in artificial intelligence in practical problem...
This paper proposes a neural network weights and topology optimization using genetic evolution and t...