This thesis consists of two parts. The first part reviews the general structure of a pattern recognition system and, in particular, various statistical and neural classification algorithms. The presentation then focuses on subspace classification methods that form a family of semiparametric methods. Several improvements on the traditional subspace classification rule are presented. Most importantly, two new classification techniques, here named the Local Subspace Classifier (LSC) and the Convex Local Subspace Classifier (LSC+), are introduced. These new methods connect the subspace principle to the family of nonparametric prototype-based classifiers and, thus, seek to combine the benefits of both approaches. The second part addresses the r...
Handwritten digit recognition is one of the most important issues in the area of pattern recognition...
In automatic numeral digit recognition system, feature selection is most important factor for achiev...
Abstract — In statistical pattern recognition, the decision of which features to use is usually left...
This thesis consists of two parts. The first part reviews the general structure of a pattern recogni...
In this paper, multiple learning techniques based on Optical character recognition (OCR) for the han...
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
Pattern recognition plays a vital role due to demand in artificial intelligence in practical problem...
Project deals with the applications of ML (Machine Learning ) techniques for detecting Hand written ...
Handwritten Digit Recognition System involves reception and interpretation of handwritten digits by ...
Abstract—This paper investigates a part-based recognition method of handwritten digits. In the propo...
This paper examines benefits of using concavity-based structural features in recognition of handwri...
summary:Classifiers can be combined to reduce classification errors. We did experiments on a data se...
In spite of the fact that subspace method can approximate the distribution of categories precisely, ...
This report is a masters thesis written at the Department of Mathematics, Linköping University. Two...
Handwritten digit recognition is one of the most important issues in the area of pattern recognition...
In automatic numeral digit recognition system, feature selection is most important factor for achiev...
Abstract — In statistical pattern recognition, the decision of which features to use is usually left...
This thesis consists of two parts. The first part reviews the general structure of a pattern recogni...
In this paper, multiple learning techniques based on Optical character recognition (OCR) for the han...
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
Pattern recognition plays a vital role due to demand in artificial intelligence in practical problem...
Project deals with the applications of ML (Machine Learning ) techniques for detecting Hand written ...
Handwritten Digit Recognition System involves reception and interpretation of handwritten digits by ...
Abstract—This paper investigates a part-based recognition method of handwritten digits. In the propo...
This paper examines benefits of using concavity-based structural features in recognition of handwri...
summary:Classifiers can be combined to reduce classification errors. We did experiments on a data se...
In spite of the fact that subspace method can approximate the distribution of categories precisely, ...
This report is a masters thesis written at the Department of Mathematics, Linköping University. Two...
Handwritten digit recognition is one of the most important issues in the area of pattern recognition...
In automatic numeral digit recognition system, feature selection is most important factor for achiev...
Abstract — In statistical pattern recognition, the decision of which features to use is usually left...