A current focus of intense research in pattern classification is the combination of several classifier systems, which can be built following either the same or different models and/or datasets building approaches. These systems perform information fusion of classification decisions at different levels overcoming limitations of traditional approaches based on single classifiers. This paper presents an up-to-date survey on multiple classifier system (MCS) from the point of view of Hybrid Intelligent Systems. The article discusses major issues, such as diversity and decision fusion methods, providing a vision of the spectrum of applications that are currently being developed
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
A multiple classifier system can only improve the performance when the members in the system are div...
In statistical pattern recognition, the principal task is to classify abstract data sets. Instead o...
Problem of pattern recognition is accompanying our whole life, therefore methods of automatic patter...
This book delivers a definite and compact knowledge on how hybridization can help improving the qual...
This special issue covers topics related to information fusion in the context of hybrid intelligent ...
Classification accuracy can be improved through multiple classifier approach. It has been proven tha...
In classification applications, the goal of fusion techniques is to exploit complementary approaches...
This paper describes a system managing data fusion in the Pattern Recognition (PR) field. The proble...
A wealth of approaches exists to perform classification of items of interest. The goal of fusion tec...
In the field of pattern recognition, fusion of multiple classifiers is currently used for solving di...
To combine or not to combine? Though not a question of the same gravity as the Shakespeare’s to be o...
Multiclassifier systems, the focus of this article, provide scientists and data professionals with p...
Due to the rapid advancement of knowledge and technologies, the problem of decision making is gettin...
Intelligent Data Analysis deals with the visualization, pre-processing, pattern recognition and know...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
A multiple classifier system can only improve the performance when the members in the system are div...
In statistical pattern recognition, the principal task is to classify abstract data sets. Instead o...
Problem of pattern recognition is accompanying our whole life, therefore methods of automatic patter...
This book delivers a definite and compact knowledge on how hybridization can help improving the qual...
This special issue covers topics related to information fusion in the context of hybrid intelligent ...
Classification accuracy can be improved through multiple classifier approach. It has been proven tha...
In classification applications, the goal of fusion techniques is to exploit complementary approaches...
This paper describes a system managing data fusion in the Pattern Recognition (PR) field. The proble...
A wealth of approaches exists to perform classification of items of interest. The goal of fusion tec...
In the field of pattern recognition, fusion of multiple classifiers is currently used for solving di...
To combine or not to combine? Though not a question of the same gravity as the Shakespeare’s to be o...
Multiclassifier systems, the focus of this article, provide scientists and data professionals with p...
Due to the rapid advancement of knowledge and technologies, the problem of decision making is gettin...
Intelligent Data Analysis deals with the visualization, pre-processing, pattern recognition and know...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
A multiple classifier system can only improve the performance when the members in the system are div...
In statistical pattern recognition, the principal task is to classify abstract data sets. Instead o...