Microsoft, Motorola, Siemens, Hitachi, IAPR, NICI, IUF We discuss a multistage method, cascading, where there is a sequence of classifiers ordered in terms of complexity (of the classifier or the repre- sentation) and specificity, in that early classifiers are simple and general and later ones are more complex and are local. For building portable, low-cost handwriting recognizers, memory and computational requirements are as critical as accuracy and our proposed method, cascading, is a way to gain from having multiple classifiers, without much losing from cost. Simulation results on optical and pen-based handwriting digit recognition indicate that when compared with voting, mixture of experts and stacking, our proposed method, cascading, do...
Summary. Optical character recognition (OCR) is a classic example of a decision mak-ing problem wher...
For recognition in image data, the large number of features can cause an unnecessary increase in the...
International audienceThe focus of this paper is on machine learning. More specifically, a classifie...
We discuss a multistage method, cascading, where there is a sequence of classifiers ordered in terms...
We investigate techniques to combine multiple representations of a handwritten digit to increase cla...
. Pen-based handwriting recognition has enormous practical utility. It is different from optical rec...
In this paper we present a multiple classifier system (MCS) for on-line handwriting recognition. The...
summary:We propose a multistage recognition method built as a cascade of a linear parametric model a...
summary:Classifiers can be combined to reduce classification errors. We did experiments on a data se...
Aiming at a high recognition rate and a low error rate at the same time, a cascade ensemble classifi...
In this paper we propose two novel multiple classifier fusion schemes which, although different in t...
The aim of this paper is to introduce a novel prototype generation technique for handwriting digit r...
In this paper we investigate the properties of novel systems for handwritten character recognition w...
Microsoft, Motorola, Siemens, Hitachi, IAPR, NICI, IUF In this paper we introduce a new strategy for...
This paper proposes an efficient three-stage classifier for handwritten digit recognition based on N...
Summary. Optical character recognition (OCR) is a classic example of a decision mak-ing problem wher...
For recognition in image data, the large number of features can cause an unnecessary increase in the...
International audienceThe focus of this paper is on machine learning. More specifically, a classifie...
We discuss a multistage method, cascading, where there is a sequence of classifiers ordered in terms...
We investigate techniques to combine multiple representations of a handwritten digit to increase cla...
. Pen-based handwriting recognition has enormous practical utility. It is different from optical rec...
In this paper we present a multiple classifier system (MCS) for on-line handwriting recognition. The...
summary:We propose a multistage recognition method built as a cascade of a linear parametric model a...
summary:Classifiers can be combined to reduce classification errors. We did experiments on a data se...
Aiming at a high recognition rate and a low error rate at the same time, a cascade ensemble classifi...
In this paper we propose two novel multiple classifier fusion schemes which, although different in t...
The aim of this paper is to introduce a novel prototype generation technique for handwriting digit r...
In this paper we investigate the properties of novel systems for handwritten character recognition w...
Microsoft, Motorola, Siemens, Hitachi, IAPR, NICI, IUF In this paper we introduce a new strategy for...
This paper proposes an efficient three-stage classifier for handwritten digit recognition based on N...
Summary. Optical character recognition (OCR) is a classic example of a decision mak-ing problem wher...
For recognition in image data, the large number of features can cause an unnecessary increase in the...
International audienceThe focus of this paper is on machine learning. More specifically, a classifie...