This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained handwritten word . The proposed algorithm is based on vertical contour analysis. Proposed algorithm is performed to generate presegmentation by analyzing the vertical contours from right to left. The unwanted segmentation points are reduced using neural network validation to improve accuracy of segmentation. The neural network is utilized to validate segmentation points. The experiments are performed on the IAM benchmark database. The results are showing that the proposed algorithm capable to accurately locating the letter boundaries for unconstrained handwritten words
An algorithm for segmenting unconstrained printed and cursive words is proposed. The algorithm initi...
We present a system for recognizing off-line cursive English text, guided in part by global characte...
This paper presents a novel segmentation algorithm for offline cursive handwriting recognition. An o...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
Cursive handwriting is writing style acquainted by nicely link between adjacent characters. Nowadays...
The purpose of this paper is to present a novel contour code feature in conjunction with a rule base...
This paper describes an enhanced neural network-based segmentation technique for improving the segme...
AbstractCharacter Segmentation is the most crucial step for any OCR (Optical Character Recognition) ...
An algorithm for segmenting unconstrained printed and cursive words is proposed. The algorithm initi...
We present a system for recognizing off-line cursive English text, guided in part by global characte...
This paper presents a novel segmentation algorithm for offline cursive handwriting recognition. An o...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
This paper presents a robust algorithm to identify the letter boundaries in images of unconstrained ...
Cursive handwriting is writing style acquainted by nicely link between adjacent characters. Nowadays...
The purpose of this paper is to present a novel contour code feature in conjunction with a rule base...
This paper describes an enhanced neural network-based segmentation technique for improving the segme...
AbstractCharacter Segmentation is the most crucial step for any OCR (Optical Character Recognition) ...
An algorithm for segmenting unconstrained printed and cursive words is proposed. The algorithm initi...
We present a system for recognizing off-line cursive English text, guided in part by global characte...
This paper presents a novel segmentation algorithm for offline cursive handwriting recognition. An o...