This work presents the application of HMM adaptation techniques to the problem of off-line cursive script recognition. Instead of training a new model for each writer one first creates a unique model with a mixed database and then adapts it for each different writer using his own small dataset. Experiments on a publicly available benchmark database show that an adapted system has an accuracy higher than 80% even when less than 30 word samples are used during adaptation, while a system trained using the data of the single writer only needs at least 200 words (the estimate is a lower bound) in order to achieve the same performance as the adapted models
This work presents an Offline Cursive Word Recognition System dealing with single writer samples. Th...
This research focused on the off-line cursive script recognition application. The problem is very la...
Recognition of handwritten Arabic cursive texts is a complex task due to the similarities between le...
A system for off-line cursive script recognition is presented. A new normalization technique (based ...
A system for off-line cursive script recognition is presented. A new normalization technique (based ...
This work presents an Offline Cursive Word Recogni-tion System dealing with single writer samples. T...
Microsoft, Motorola, Siemens, Hitachi, IAPR, NICI, IUF Hidden Markov Models (HMMs) can model the sim...
Abstract. Handwritten text recognition is one of the most difficult problems in the field of pattern...
In this paper, a new analytic scheme, which uses a sequence of segmentation and recognition algorith...
This work presents an offline cursive word recognition system dealing with single writer samples. Th...
AbstractÐIn this paper, a new analytic scheme, which uses a sequence of segmentation and recognition...
: Dynamic (on-line) cursive script recognition works with data obtained from a digitising device whi...
This paper presents an automatic segmentation scheme for cursive handwritten text lines using the tr...
In this paper a system for on-line cursive handwriting recognition is described. The system is based...
This paper describes an approach for word-based on-line and off-line recognition of handwritten curs...
This work presents an Offline Cursive Word Recognition System dealing with single writer samples. Th...
This research focused on the off-line cursive script recognition application. The problem is very la...
Recognition of handwritten Arabic cursive texts is a complex task due to the similarities between le...
A system for off-line cursive script recognition is presented. A new normalization technique (based ...
A system for off-line cursive script recognition is presented. A new normalization technique (based ...
This work presents an Offline Cursive Word Recogni-tion System dealing with single writer samples. T...
Microsoft, Motorola, Siemens, Hitachi, IAPR, NICI, IUF Hidden Markov Models (HMMs) can model the sim...
Abstract. Handwritten text recognition is one of the most difficult problems in the field of pattern...
In this paper, a new analytic scheme, which uses a sequence of segmentation and recognition algorith...
This work presents an offline cursive word recognition system dealing with single writer samples. Th...
AbstractÐIn this paper, a new analytic scheme, which uses a sequence of segmentation and recognition...
: Dynamic (on-line) cursive script recognition works with data obtained from a digitising device whi...
This paper presents an automatic segmentation scheme for cursive handwritten text lines using the tr...
In this paper a system for on-line cursive handwriting recognition is described. The system is based...
This paper describes an approach for word-based on-line and off-line recognition of handwritten curs...
This work presents an Offline Cursive Word Recognition System dealing with single writer samples. Th...
This research focused on the off-line cursive script recognition application. The problem is very la...
Recognition of handwritten Arabic cursive texts is a complex task due to the similarities between le...