In this paper, a text vectorization method is proposed using OCR (Optical Character Recognition) and character stroke modeling. This is based on the observation that for a particular character, its font glyphs may have different shapes, but often share same stroke structures. Like many other methods, the proposed algorithm contains two procedures, dominant point determination and data fitting. The first one partitions the outlines into segments and second one fits a curve to each segment. In the proposed method, the dominant points are classified as 'major' (specifying stroke structures) and 'minora' (specifying serif shapes). A set of rules (parameters) are determined offline specifying for each character the number of ...
Optical Character Recognition (OCR) is a technology that recognizes text in documents and converts i...
Scene text images usually suffer from perspective distortions, and hence their rectification has bee...
Skeletonisation is a key process in character recognition in natural images. Under the assumption th...
The optical character recognition (OCR) module is a fundamental part of each automated text processi...
This paper introduces a scheme for classification of online handwritten characters based on polynomi...
Traditional optical character recognition (OCR) uses thresholding and pre- defined characters to rec...
This paper introduces an effective character extraction algorithm that can be used for optical chara...
Abstract: Optical Character Recognition (OCR) refers to the process of converting printed Tamil te...
The author introduces a syntactic omni-font character recognition system that recognizes a wide rang...
This paper suggests a scheme for classifying online handwritten characters, based on dynamic space...
An unconstrained end-to-end text localization and recog-nition method is presented. The method intro...
Global gray-level thresholding techniques such as Otsu's method, and local gray-level threshold...
Although OCR techniques work very reliably for high-resolution documents, the recognition of superim...
Abstract—This paper proposes a statistical character structure modeling method. It represents each s...
This paper presents detailed review in the field of Optical Character Recognition. Various technique...
Optical Character Recognition (OCR) is a technology that recognizes text in documents and converts i...
Scene text images usually suffer from perspective distortions, and hence their rectification has bee...
Skeletonisation is a key process in character recognition in natural images. Under the assumption th...
The optical character recognition (OCR) module is a fundamental part of each automated text processi...
This paper introduces a scheme for classification of online handwritten characters based on polynomi...
Traditional optical character recognition (OCR) uses thresholding and pre- defined characters to rec...
This paper introduces an effective character extraction algorithm that can be used for optical chara...
Abstract: Optical Character Recognition (OCR) refers to the process of converting printed Tamil te...
The author introduces a syntactic omni-font character recognition system that recognizes a wide rang...
This paper suggests a scheme for classifying online handwritten characters, based on dynamic space...
An unconstrained end-to-end text localization and recog-nition method is presented. The method intro...
Global gray-level thresholding techniques such as Otsu's method, and local gray-level threshold...
Although OCR techniques work very reliably for high-resolution documents, the recognition of superim...
Abstract—This paper proposes a statistical character structure modeling method. It represents each s...
This paper presents detailed review in the field of Optical Character Recognition. Various technique...
Optical Character Recognition (OCR) is a technology that recognizes text in documents and converts i...
Scene text images usually suffer from perspective distortions, and hence their rectification has bee...
Skeletonisation is a key process in character recognition in natural images. Under the assumption th...