Decision tree and deep learning based probabilistic model for character recognition

被引:0
|
作者
A. K. Sampath
Dr. N. Gomathi
机构
[1] Rizvi College of Engineering,
[2] Veltech Dr.R.R&Dr.S.R. Technical University,undefined
来源
关键词
grey level co-occurrence matrix feature; histogram oriented gabor gradient feature; hybrid classifier; holoentropy enabled decision tree classifier;
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中图分类号
学科分类号
摘要
One of the most important methods that finds usefulness in various applications, such as searching historical manuscripts, forensic search, bank check reading, mail sorting, book and handwritten notes transcription, is handwritten character recognition. The common issues in the character recognition are often due to different writing styles, orientation angle, size variation (regarding length and height), etc. This study presents a classification model using a hybrid classifier for the character recognition by combining holoentropy enabled decision tree (HDT) and deep neural network (DNN). In feature extraction, the local gradient features that include histogram oriented gabor feature and grid level feature, and grey level co-occurrence matrix (GLCM) features are extracted. Then, the extracted features are concatenated to encode shape, color, texture, local and statistical information, for the recognition of characters in the image by applying the extracted features to the hybrid classifier. In the experimental analysis, recognition accuracy of 96% is achieved. Thus, it can be suggested that the proposed model intends to provide more accurate character recognition rate compared to that of character recognition techniques used in the literature.
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页码:2862 / 2876
页数:14
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