Microsoft, Motorola, Siemens, Hitachi, IAPR, NICI, IUF An unsupervised kmeans clustering algorithm for hidden Markov models is described and applied to the task of generating subclass models for individual handwritten character classes. The algorithm is compared to a related clustering method and shown to give a relative change in the error rate of as much as 8% on a 30,000word vocabulary, unconstrained style, online, writerindependent handwriting recognition t
Abstract A new scheme for the optimization of code-book sizes for Hidden Markov Models (HMMs) and th...
This work reports experiments with four hierarchical clustering algorithms and two clustering indice...
Being high-dimensional and relevant in semantics, text clustering is still an important topic in dat...
An unsupervised kmeans clustering algorithm for hidden Markov models is described and applied to th...
Handwriting recognition is a main topic of Optical Character Recognition (OCR), which has a very wid...
We present a learning strategy for Hidden Markov Models that may be used to cluster handwriting sequ...
This paper addresses the problem of improving the performance of an online, writerindependent, larg...
We present a learning strategy for Hidden Markov Models that may be used to cluster handwriting sequ...
This paper investigates the performance of hidden Markov models (HMMs) for handwriting recognition. ...
National audienceIn this paper, we present an on-line handwritten character recognition system which...
This thesis consists of two main parts. In the first part we study the recognition of isolated handw...
Abstract. A novel, fast feature selection method for hidden Markov model (HMM) based classifiers is ...
This thesis aims at elaborating a new handwritten words recognition system that can be learned and a...
This thesis aims at elaborating a new handwritten words recognition system that can be learned and a...
In this paper a new clustering technique for improving off-line handwritten digit recognition is in...
Abstract A new scheme for the optimization of code-book sizes for Hidden Markov Models (HMMs) and th...
This work reports experiments with four hierarchical clustering algorithms and two clustering indice...
Being high-dimensional and relevant in semantics, text clustering is still an important topic in dat...
An unsupervised kmeans clustering algorithm for hidden Markov models is described and applied to th...
Handwriting recognition is a main topic of Optical Character Recognition (OCR), which has a very wid...
We present a learning strategy for Hidden Markov Models that may be used to cluster handwriting sequ...
This paper addresses the problem of improving the performance of an online, writerindependent, larg...
We present a learning strategy for Hidden Markov Models that may be used to cluster handwriting sequ...
This paper investigates the performance of hidden Markov models (HMMs) for handwriting recognition. ...
National audienceIn this paper, we present an on-line handwritten character recognition system which...
This thesis consists of two main parts. In the first part we study the recognition of isolated handw...
Abstract. A novel, fast feature selection method for hidden Markov model (HMM) based classifiers is ...
This thesis aims at elaborating a new handwritten words recognition system that can be learned and a...
This thesis aims at elaborating a new handwritten words recognition system that can be learned and a...
In this paper a new clustering technique for improving off-line handwritten digit recognition is in...
Abstract A new scheme for the optimization of code-book sizes for Hidden Markov Models (HMMs) and th...
This work reports experiments with four hierarchical clustering algorithms and two clustering indice...
Being high-dimensional and relevant in semantics, text clustering is still an important topic in dat...