In this study, we introduce a new set of one-dimensional discrete, constant length features to represent two dimensional shape information for HMM (Hidden Markov Model), based handwritten optical character recognition problem. The proposed feature set embeds the two dimensional information into a sequence of one-dimensional codes, selected from a code book. It provides a consistent normalization among distinct classes of shapes, which is very convenient for HMM based shape recognition schemes. The new feature set is used in a handwritten optical character recognition scheme, where a sequence of segmentation and recognition stages is employed. The normalization parameters, which maximize the recognition I ate, are dynamically, estimated in t...
ABSTRACT: part 1 : A combinatorial method ; part. 2 : An application to model-based on-line handwrit...
Inkball models provide a tool for matching and comparison of spatially structured markings such as h...
We present a technique using Markov models with spectral features for recognizing 2D shapes. We anal...
In this study, we introduce a new set of one-dimensional discrete, constant length features to repre...
In this paper, a new analytic scheme, which uses a sequence of segmentation and recognition algorith...
Recognition rate of handwritten character is still limited around 90 percent due to the presence of ...
A method is described for representing character images which involves the extraction of features fr...
AbstractÐIn this paper, a new analytic scheme, which uses a sequence of segmentation and recognition...
Abstract- Recognition rate of handwritten character is still limited due to presence of large variat...
Handwritten character recognition plays an important role in the modern world. It can solve more com...
Recognition of printed and hand printed characters has received much attention over the past decade ...
A method for the recognition of hand-printed numerals using hidden Markov models is described. The m...
In this book, we introduce several methods for recognising unconstrained handwritten words and digit...
Abstract—This paper describes a hidden Markov model-based approach designed to recognize off-line un...
Abstract. A novel, fast feature selection method for hidden Markov model (HMM) based classifiers is ...
ABSTRACT: part 1 : A combinatorial method ; part. 2 : An application to model-based on-line handwrit...
Inkball models provide a tool for matching and comparison of spatially structured markings such as h...
We present a technique using Markov models with spectral features for recognizing 2D shapes. We anal...
In this study, we introduce a new set of one-dimensional discrete, constant length features to repre...
In this paper, a new analytic scheme, which uses a sequence of segmentation and recognition algorith...
Recognition rate of handwritten character is still limited around 90 percent due to the presence of ...
A method is described for representing character images which involves the extraction of features fr...
AbstractÐIn this paper, a new analytic scheme, which uses a sequence of segmentation and recognition...
Abstract- Recognition rate of handwritten character is still limited due to presence of large variat...
Handwritten character recognition plays an important role in the modern world. It can solve more com...
Recognition of printed and hand printed characters has received much attention over the past decade ...
A method for the recognition of hand-printed numerals using hidden Markov models is described. The m...
In this book, we introduce several methods for recognising unconstrained handwritten words and digit...
Abstract—This paper describes a hidden Markov model-based approach designed to recognize off-line un...
Abstract. A novel, fast feature selection method for hidden Markov model (HMM) based classifiers is ...
ABSTRACT: part 1 : A combinatorial method ; part. 2 : An application to model-based on-line handwrit...
Inkball models provide a tool for matching and comparison of spatially structured markings such as h...
We present a technique using Markov models with spectral features for recognizing 2D shapes. We anal...