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A Comparison of Feature and Pixel-Based Methods for Recognizing Handwritten Bangla Digits

机译:特征和基于像素的手写孟加拉数字识别方法的比较

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We propose a novel handwritten character recognition method for isolated handwritten Bangla digits. A feature is introduced for such patterns, the contour angular technique. It is compared to other methods, such as the hotspot feature, the gray-level normalized character image and a basic low-resolution pixel-based method. One of the goals of this study is to explore performance differences between dedicated feature methods and the pixel-based methods. The four methods are compared with support vector machine (SVM) classifiers on the collection of handwritten Bangla digit images. The results show that the fast contour angular technique outperforms the other techniques when not very many training examples are used. The fast contour angular technique captures aspects of curvature of the handwritten image and results in much faster character classification than the gray pixel-based method. Still, this feature obtains a similar recognition compared to the gray pixel-based method when a large training set is used. In order to investigate further whether the different feature methods represent complementary aspects of shape, the effect of majority voting is explored. The results indicate that the majority voting method achieves the best recognition performance on this dataset.
机译:我们提出了一种新的手写字符识别方法,用于孤立的手写孟加拉语数字。针对这种图案引入了一种特征,即轮廓角技术。将其与其他方法进行比较,例如热点功能,灰度归一化字符图像和基本的基于低分辨率像素的方法。这项研究的目标之一是探索专用特征方法与基于像素的方法之间的性能差异。在手写的孟加拉数字图像集合上,将这四种方法与支持向量机(SVM)分类器进行了比较。结果表明,在不使用太多训练示例的情况下,快速轮廓角技术优于其他技术。快速轮廓角度技术可以捕获手写图像的曲率,并且比基于灰色像素的方法可以更快地进行字符分类。尽管如此,当使用大型训练集时,与基于灰色像素的方法相比,此功能仍可获得相似的识别。为了进一步研究不同的特征方法是否代表形状的互补方面,探讨了多数表决的效果。结果表明,多数投票方法在该数据集上获得了最佳的识别性能。

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