Recognition of handwritten digits is a problem, which could serve as model task for multiclass recognition of image patterns. This thesis studies different kinds of algoritms (Self-Organizing Maps, Randomized tree and AdaBoost) and methods for increasing accuracy using fusion (majority voting, averaging log likelihood ratio, linear logistic regression). Fusion methods were used for combine classifiers with indentical train parameters, with different training methods and with multiscale input
In this paper we present two algorithms for selecting prototypes from the given training data set. H...
Handwriting recognition is widely used, and the using of neural network as a method to do is quite ...
Project deals with the applications of ML (Machine Learning ) techniques for detecting Hand written ...
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
summary:Classifiers can be combined to reduce classification errors. We did experiments on a data se...
Recognition of handwritten digits is one of computer vision problematics that can not be solved with...
We present an original algorithm for recognizing handwritten digits. We begin by introducing a virtu...
Handwritten digit recognition is one of the most important issues in the area of pattern recognition...
OCR (Optical Character Recognition) is a line of research within image processing for which many tec...
Recognition of handwritten digits is a very popular application of machine learning. In this context...
Handwritten digits recognition has been treated as a multi-class classification problem in the machi...
Digit Recognition is a computer vision technique to predict the numerical value of digits in a datas...
Pattern recognition plays a vital role due to demand in artificial intelligence in practical problem...
Aiming at a high recognition rate and a low error rate at the same time, a cascade ensemble classifi...
Pattern recognition is one of the major challenges in statistics framework. Its goal is the feature...
In this paper we present two algorithms for selecting prototypes from the given training data set. H...
Handwriting recognition is widely used, and the using of neural network as a method to do is quite ...
Project deals with the applications of ML (Machine Learning ) techniques for detecting Hand written ...
This paper covers the work done in handwritten digit recognition and the various classifiers that ha...
summary:Classifiers can be combined to reduce classification errors. We did experiments on a data se...
Recognition of handwritten digits is one of computer vision problematics that can not be solved with...
We present an original algorithm for recognizing handwritten digits. We begin by introducing a virtu...
Handwritten digit recognition is one of the most important issues in the area of pattern recognition...
OCR (Optical Character Recognition) is a line of research within image processing for which many tec...
Recognition of handwritten digits is a very popular application of machine learning. In this context...
Handwritten digits recognition has been treated as a multi-class classification problem in the machi...
Digit Recognition is a computer vision technique to predict the numerical value of digits in a datas...
Pattern recognition plays a vital role due to demand in artificial intelligence in practical problem...
Aiming at a high recognition rate and a low error rate at the same time, a cascade ensemble classifi...
Pattern recognition is one of the major challenges in statistics framework. Its goal is the feature...
In this paper we present two algorithms for selecting prototypes from the given training data set. H...
Handwriting recognition is widely used, and the using of neural network as a method to do is quite ...
Project deals with the applications of ML (Machine Learning ) techniques for detecting Hand written ...