Text Dependent Writer Identification using Support Vector Machine
ثبت نشده
چکیده
Writer identification is the process of identifying the writer of the document based on their handwriting. Recent advances in computational engineering, artificial intelligence, data mining, image processing, pattern recognition and machine learning have shown that it is possible to automate writer identification. This paper proposes a model for text-dependent writer identification based on English handwriting. Features are extracted from scanned images of handwritten words and trained using pattern classification algorithm namely support vector machine. It is observed that accuracy of proposed writer identification model with Polynomial kernel show 94. 27% accuracy.
منابع مشابه
Text Dependent Writer Identification using Support Vector Machine
Writer identification is the process of identifying the writer of the document based on their handwriting. Recent advances in computational engineering, artificial intelligence, data mining, image processing, pattern recognition and machine learning have shown that it is possible to automate writer identification. This paper proposes a model for text-dependent writer identification based on Eng...
متن کاملEmotion Detection in Persian Text; A Machine Learning Model
This study aimed to develop a computational model for recognition of emotion in Persian text as a supervised machine learning problem. We considered Pluthchik emotion model as supervised learning criteria and Support Vector Machine (SVM) as baseline classifier. We also used NRC lexicon and contextual features as training data and components of the model. One hundred selected texts including pol...
متن کاملIdentification areas with inundation potential for urban runoff harvesting using the support vector machine model
Rainfall-runoff from urban areas is one of the available water resources, which is wasted due to lack of attention and proper management. Besides, urban runoff excess of drains capacity causing many problems including inundation and urban environmental pollution. Therefore, harvesting this runoff can provide a part of the required water in urban areas, and also reduce flood and urban inund...
متن کاملWriter Identification with Hybrid Edge Directional Features and Nonlinear Dimension Reduction
Writer identification as an interesting pattern recognition topic has attracted many researchers in forensic and biometric applications, where the identity authentication is realized by the writing style as biometric features. The core issue in writer identification, therefore, is the extraction of unique features, by which the individualistic of such handwriting styles can be faithfully repres...
متن کاملMultiple Graphometric Features for Writer Identification as part of Forensic Handwriting Analysis
This paper describes an approach to writer identification based on graphometric features. These features are used by Forensic Document Examiners (FDE) which realize their analysis observing and extracting from the questioned documents a set of important individualizing primitives. Thus, in this work we present a framework for offline writer identification which combine multiples graphometry fea...
متن کامل