summary:Classifiers can be combined to reduce classification errors. We did experiments on a data set consisting of different sets of features of handwritten digits. Different types of classifiers were trained on these feature sets. The performances of these classifiers and combination rules were tested. The best results were acquired with the mean, median and product combination rules. The product was best for combining linear classifiers, the median for $k$-NN classifiers. Training a classifier on all features did not result in less errors
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
Aiming at a high recognition rate and a low error rate at the same time, a cascade ensemble classifi...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
summary:Classifiers can be combined to reduce classification errors. We did experiments on a data se...
Often a pattern recognition problem is too hard to solve with ordinary approaches involving too comp...
Abstract. In the problem of one-class classication target objects should be distinguished from outli...
. Pen-based handwriting recognition has enormous practical utility. It is different from optical rec...
We investigate techniques to combine multiple representations of a handwritten digit to increase cla...
In pattern recognition, the reliability and the recognition accuracy of a classification system are ...
The aim of this paper is to investigate the role of the apriori knowledge in the process of classif...
Handwritten digits recognition has been treated as a multi-class classification problem in the machi...
AbstractÐIn this paper, we propose a new approach to combine multiple features in handwriting recogn...
In this paper we present how the classification results can be improved using a set of classifiers w...
Recognition of handwritten digits is a very popular application of machine learning. In this context...
In this paper, we investigate the advantages and weaknesses of various decision fusion schemes using...
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
Aiming at a high recognition rate and a low error rate at the same time, a cascade ensemble classifi...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...
summary:Classifiers can be combined to reduce classification errors. We did experiments on a data se...
Often a pattern recognition problem is too hard to solve with ordinary approaches involving too comp...
Abstract. In the problem of one-class classication target objects should be distinguished from outli...
. Pen-based handwriting recognition has enormous practical utility. It is different from optical rec...
We investigate techniques to combine multiple representations of a handwritten digit to increase cla...
In pattern recognition, the reliability and the recognition accuracy of a classification system are ...
The aim of this paper is to investigate the role of the apriori knowledge in the process of classif...
Handwritten digits recognition has been treated as a multi-class classification problem in the machi...
AbstractÐIn this paper, we propose a new approach to combine multiple features in handwriting recogn...
In this paper we present how the classification results can be improved using a set of classifiers w...
Recognition of handwritten digits is a very popular application of machine learning. In this context...
In this paper, we investigate the advantages and weaknesses of various decision fusion schemes using...
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
Aiming at a high recognition rate and a low error rate at the same time, a cascade ensemble classifi...
We develop a common theoretical framework for combining classifiers which use distinct pattern repre...