Improved statistical features for cursive character recognition
This paper presents an improved feature extraction technique for the cursive characters recognition. This technique can be applied in the perspective of handwritten word recognition system based on segmentation. The bases of fused statistical features extraction technique are improved projection pro...
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2011
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my.utm.291642019-03-17T03:03:13Z http://eprints.utm.my/id/eprint/29164/ Improved statistical features for cursive character recognition Saba, Tanzila Rehman, Amjad Sulong, Ghazali QA75 Electronic computers. Computer science This paper presents an improved feature extraction technique for the cursive characters recognition. This technique can be applied in the perspective of handwritten word recognition system based on segmentation. The bases of fused statistical features extraction technique are improved projection profile and transition features. To extend this principal, a technique is integrated with the projection profile information to detect shifts of background and foreground pixels in the image of a character. A classifier based on neural network is used to test the improved fused features and comparison is done with the projection profile (PP) and transition feature (TF) extraction techniques. By using standard dataset, PP and TF techniques altogether show best performance with fused features having new enhancements and the best results in the literature are compared promisingly with this technique. The characters that are taken from the CEDAR dataset show 91.38% recognition accuracy. ICIC International 2011-09 Article PeerReviewed Saba, Tanzila and Rehman, Amjad and Sulong, Ghazali (2011) Improved statistical features for cursive character recognition. International Journal Of Innovative Computing Information And Control, 7 (9). pp. 5211-5224. ISSN 1349-4198 http://www.ijicic.org/contents.htm |
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QA75 Electronic computers. Computer science Saba, Tanzila Rehman, Amjad Sulong, Ghazali Improved statistical features for cursive character recognition |
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This paper presents an improved feature extraction technique for the cursive characters recognition. This technique can be applied in the perspective of handwritten word recognition system based on segmentation. The bases of fused statistical features extraction technique are improved projection profile and transition features. To extend this principal, a technique is integrated with the projection profile information to detect shifts of background and foreground pixels in the image of a character. A classifier based on neural network is used to test the improved fused features and comparison is done with the projection profile (PP) and transition feature (TF) extraction techniques. By using standard dataset, PP and TF techniques altogether show best performance with fused features having new enhancements and the best results in the literature are compared promisingly with this technique. The characters that are taken from the CEDAR dataset show 91.38% recognition accuracy. |
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Article |
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Saba, Tanzila Rehman, Amjad Sulong, Ghazali |
author_facet |
Saba, Tanzila Rehman, Amjad Sulong, Ghazali |
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Saba, Tanzila |
title |
Improved statistical features for cursive character recognition |
title_short |
Improved statistical features for cursive character recognition |
title_full |
Improved statistical features for cursive character recognition |
title_fullStr |
Improved statistical features for cursive character recognition |
title_full_unstemmed |
Improved statistical features for cursive character recognition |
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improved statistical features for cursive character recognition |
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ICIC International |
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2011 |
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http://eprints.utm.my/id/eprint/29164/ http://www.ijicic.org/contents.htm |
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