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Fourth International Conference on Computer and Information Technology (CIT'04)
Fuzzy Min-Max Neural Network Based Translation, Rotation and Scale Invariant Character Recognition Using RTSI Features
Wuhan, China
September 14-September 16
ISBN: 0-7695-2216-5
Abhijeet V. Nandedkar, SGGS College of Engineering & Technology
Kishore Venishetti, Kamala Institute of Technology & Science
Ajendra Kumar Rathod, Kamala Institute of Technology & Science
This paper proposes a character recognition system that is invariant to translation, rotation and scale. The system has two main sections namely, feature extraction and recognition. The feature extraction is carried out using RTSI (Rotation, Translation, and Scale Invariant) features. The main advantage of this feature vector is that it doesn?t require the normalization of character. These features are very simple to implement as compared to other methods. The Fuzzy Min-Max neural network (FMNN) is used in the recognition phase. The four dimensional RTSI feature vector consists of Normalized moment of inertia, Centroid length ratio, Centroid sum, and Normalized centroid sum. The character recognition systems is tested on 26 uppercase typed English Capital letters with various fonts such as Ariel Unicode, Ariel Narrow, Microsoft scan serif and hand written characters.
Index Terms:
Character Recognition System, Fuzzy minmax neural network, and Invariant character recognition, RTSI Features
Citation:
Abhijeet V. Nandedkar, Kishore Venishetti, Ajendra Kumar Rathod, "Fuzzy Min-Max Neural Network Based Translation, Rotation and Scale Invariant Character Recognition Using RTSI Features," cit, pp.159-164, Fourth International Conference on Computer and Information Technology (CIT'04), 2004
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