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Bangla Handwritten City Name Recognition Using Gradient-Based Feature

机译:Bangla手写的城市名称识别使用基于梯度的特征

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In recent times, holistic word recognition has achieved enormous attention from the researchers due to its segmentation-free approach. In the present work, a holistic word recognition method is presented for the recognition of handwritten city names in Bangla script. At first, each word image is hypothetically segmented into equal number of grids. Then gradient-based features, inspired by Histogram of Oriented Gradients (HOG) feature descriptor, are extracted from each of the grids. For the selection of suitable classifier, five well-known classifiers are compared in terms of their recognition accuracies and finally the classifier Sequential Minimal Optimization (SMO) is chosen. The system has achieved 90.65% accuracy on 10,000 samples comprising of 20 most popular city names of West Bengal, a state of India.
机译:近来,由于自由分割方法,整体词识别从研究人员取得了巨大的关注。在目前的工作中,介绍了全面的单词识别方法,用于识别Bangla脚本中的手写城市名称。首先,每个单词图像被假设分段为相等数量的网格。然后,由面向梯度(HOG)特征描述符的直方图的激发的基于梯度的特征,从每个网格中提取。为了选择合适的分类器,在其识别精度方面比较五个公知的分类器,最后选择分类器顺序最小优化(SMO)。该系统在10,000个样本上实现了90.65%的准确性,该样品包括西孟加拉邦的20个最受欢迎的城市名称,是印度州的20个。

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