This paper presents a novel segmentation algorithm for offline cursive handwriting recognition. An over-segmentation algorithm is introduced to dissect the words from handwritten text based on the pixel density between upper and lower baselines. Each segment from the over-segmentation is passed to a multiple expert-based validation process. First expert compares the total foreground pixel of the segmentation point to a threshold value. The threshold is set and calculated before the segmentation by scanning the stroke components in the word. Second expert checks for closed areas such as holes. Third expert validates segmentation points using a neural voting approach which is trained on segmented characters before validation process starts. F...
This paper describes an enhanced neural network-based segmentation technique for improving the segme...
flannGnick.cs.usu.edu This paper introduces a new recognition-based segmentation ap-proach to recogn...
The paper presents a segmentation based adaptive approach for the learning and recognition of single...
This paper presents an over-segmentation and validation strategy for off-line cursive handwriting re...
Cursive handwriting is writing style acquainted by nicely link between adjacent characters. Nowadays...
Segmentation in off-line cursive handwriting recognition is a process for extracting individual char...
A novel Binary Validation as Segmentation (BVS) is presented in this paper. BVS is a bottom-up appro...
Over-Segmentation and Validation (OSV) is a well anticipated segmentation strategy in cursive off-li...
Cursive handwriting recognition is a challenging task for many real world applications such as docum...
In this paper, a new analytic scheme, which uses a sequence of segmentation and recognition algorith...
A novel Over-Segmentation and Neural Binary Validation (OSNBV) is presented in this paper. OSNBV is ...
AbstractÐIn this paper, a new analytic scheme, which uses a sequence of segmentation and recognition...
The purpose of this paper is to present a novel contour code feature in conjunction with a rule base...
A novel segment confidence-based binary segmentation (SCBS) for cursive handwritten words is present...
We present a system for recognizing off-line cursive English text, guided in part by global characte...
This paper describes an enhanced neural network-based segmentation technique for improving the segme...
flannGnick.cs.usu.edu This paper introduces a new recognition-based segmentation ap-proach to recogn...
The paper presents a segmentation based adaptive approach for the learning and recognition of single...
This paper presents an over-segmentation and validation strategy for off-line cursive handwriting re...
Cursive handwriting is writing style acquainted by nicely link between adjacent characters. Nowadays...
Segmentation in off-line cursive handwriting recognition is a process for extracting individual char...
A novel Binary Validation as Segmentation (BVS) is presented in this paper. BVS is a bottom-up appro...
Over-Segmentation and Validation (OSV) is a well anticipated segmentation strategy in cursive off-li...
Cursive handwriting recognition is a challenging task for many real world applications such as docum...
In this paper, a new analytic scheme, which uses a sequence of segmentation and recognition algorith...
A novel Over-Segmentation and Neural Binary Validation (OSNBV) is presented in this paper. OSNBV is ...
AbstractÐIn this paper, a new analytic scheme, which uses a sequence of segmentation and recognition...
The purpose of this paper is to present a novel contour code feature in conjunction with a rule base...
A novel segment confidence-based binary segmentation (SCBS) for cursive handwritten words is present...
We present a system for recognizing off-line cursive English text, guided in part by global characte...
This paper describes an enhanced neural network-based segmentation technique for improving the segme...
flannGnick.cs.usu.edu This paper introduces a new recognition-based segmentation ap-proach to recogn...
The paper presents a segmentation based adaptive approach for the learning and recognition of single...