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A comparative study on handwritten Bangla character recognition

机译:手写孟加拉人物识别的比较研究

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Recognition of handwritten Bangla characters has drawn considerable attention recently. The Bangla language is rich with characters of various styles such as numerals, basic characters, and compound and modifier characters. The inherent variation in individual writing styles, along with the complex, cursive nature of characters, makes the recognition task more challenging. To compare the outcomes of handwritten Bangla character recognition, this study considers two different approaches. The first one is classifier-based, where a hybrid model of the feature extraction technique extracts the features and a multiclass support vector machine (SVM) performs the recognition. The second one is based on a convolution neural network (CNN). For recognition, we considered 10 Bangla numerals, 50 basic characters, and a subset of compound characters that are frequently used in the Bangla language. Experimental results demonstrate that the CNN model outperforms the traditional classifier-based approach, obtaining 98.04%, 99.68%, and 98.18% recognition accuracy for Bangla basic characters, numerals, and the subset of compound characters, respectively.
机译:识别手写的Bangla字符最近引起了相当大的关注。 Bangla语言丰富,具有各种风格的字符,如数字,基本字符和复合性和修改器字符。个人写作样式的固有变化以及字符的复杂性质,使得识别任务更具挑战性。为了比较手写的Bangla字符识别的结果,本研究考虑了两种不同的方法。第一个是基于分类的,其中特征提取技术的混合模型提取特征和多字符支持向量机(SVM)执行识别。第二个基于卷积神经网络(CNN)。为了识别,我们考虑了10个Bangla数字,50个基本字符,以及常用在Bangla语言中的复合字符的子集。实验结果表明,CNN模型分别优于传统的基于分类器的方法,获得了孟加拉基本字符,数字和复合字符子集的98.04%,99.68%和98.18%的识别准确性。

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