1 research outputs found
A New Approach in Persian Handwritten Letters Recognition Using Error Correcting Output Coding
Classification Ensemble, which uses the weighed polling of outputs, is the
art of combining a set of basic classifiers for generating high-performance,
robust and more stable results. This study aims to improve the results of
identifying the Persian handwritten letters using Error Correcting Output
Coding (ECOC) ensemble method. Furthermore, the feature selection is used to
reduce the costs of errors in our proposed method. ECOC is a method for
decomposing a multi-way classification problem into many binary classification
tasks; and then combining the results of the subtasks into a hypothesized
solution to the original problem. Firstly, the image features are extracted by
Principal Components Analysis (PCA). After that, ECOC is used for
identification the Persian handwritten letters which it uses Support Vector
Machine (SVM) as the base classifier. The empirical results of applying this
ensemble method using 10 real-world data sets of Persian handwritten letters
indicate that this method has better results in identifying the Persian
handwritten letters than other ensemble methods and also single
classifications. Moreover, by testing a number of different features, this
paper found that we can reduce the additional cost in feature selection stage
by using this method.Comment: Journal of Advances in Computer Researc