A composite classification scheme is proposed by combining several classifiers with distinctly different design methodologies. The classifiers are selected from a number of state of the art pattern classification schemes with a view to obtain superior performance. In this scheme, no a priori information except a set of pre-classified data is assumed to be available. By using distinctly different classifiers, the common mode data misclassification is reduced. Traditionally, after the design and evaluation phase, the pre-classified data is discarded. In this scheme, however, the misclassified data from each classifier in the training set is tagged and stored with a view to weight the decisions of the classifiers. If a given test sample is clo...
Firstly, the thesis addresses the problem caused by the limited availability of data for some classe...
The purpose of this paper is to demonstrate that having two classifiers, a trichotomous classifier (...
We propose a new classifier combination method, the signal strength-based combining (SSC) approach, ...
A systematic and reliable approach to classify patterns is proposed when no a priori information exc...
AbstractWe propose a data-based procedure for combining a number of individual classifiers in order ...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
A novel method for evaluating the reliability of a classifier on a pattern is proposed based on the ...
Typical pattern recognition applications require to handle both binary and multiclass classification...
Typical pattern recognition applications require to handle both binary and multiclass classification...
In this paper we present how the classification results can be improved using a set of classifiers w...
This paper proposes an improved classification strategy using misclassified training samples. It is ...
A multiple classifier system can only improve the performance when the members in the system are div...
Multi-classlearningrequiresaclassifiertodiscriminateamongalargeset of L classes in order to define a...
In the field of pattern recognition, multiple classifier systems based on the combination of outputs...
Fusing classifiers’ decisions can improve the performance of a pattern recognition system. Many appl...
Firstly, the thesis addresses the problem caused by the limited availability of data for some classe...
The purpose of this paper is to demonstrate that having two classifiers, a trichotomous classifier (...
We propose a new classifier combination method, the signal strength-based combining (SSC) approach, ...
A systematic and reliable approach to classify patterns is proposed when no a priori information exc...
AbstractWe propose a data-based procedure for combining a number of individual classifiers in order ...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
A novel method for evaluating the reliability of a classifier on a pattern is proposed based on the ...
Typical pattern recognition applications require to handle both binary and multiclass classification...
Typical pattern recognition applications require to handle both binary and multiclass classification...
In this paper we present how the classification results can be improved using a set of classifiers w...
This paper proposes an improved classification strategy using misclassified training samples. It is ...
A multiple classifier system can only improve the performance when the members in the system are div...
Multi-classlearningrequiresaclassifiertodiscriminateamongalargeset of L classes in order to define a...
In the field of pattern recognition, multiple classifier systems based on the combination of outputs...
Fusing classifiers’ decisions can improve the performance of a pattern recognition system. Many appl...
Firstly, the thesis addresses the problem caused by the limited availability of data for some classe...
The purpose of this paper is to demonstrate that having two classifiers, a trichotomous classifier (...
We propose a new classifier combination method, the signal strength-based combining (SSC) approach, ...