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A Locale Group Based Line Segmentation Approach for Non Uniform Skewed and Curved Arabic Handwritings

机译:基于区域设置的基于线分割方法,用于非均匀偏斜和弯曲阿拉伯语手写

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In this paper we present a novel local group based method for extracting skewed and curved handwritten text lines in Arabic document images. We first detect all connected components and use a Support Vector Machine (SVM) to classify them either as Piece of Arabic Word (PAW) or diacritic. We then, use novel distance measures like sigmoid function based shapes to calculate the nearest neighbors for all PAWs. A subsequently graph based grouping algorithms, which follows the text lines from right to left, generates multiple candidate lines. After assessing the quality of all line candidates the final line representation is chosen. In a final step all PAWs which are not already part of a final line are inserted into the one that is closest. Experimental results show a successfully line segmentation for documents of different writers and styles.
机译:本文介绍了一种基于新的本地组基于局部组的方法,用于在阿拉伯文档图像中提取偏斜和弯曲的手写文本线。我们首先检测所有连接的组件并使用支持向量机(SVM)将它们分类为阿拉伯语(爪子)或读音器。然后,我们使用基于Sigmoid函数的形状等新颖距离测量来计算所有爪子的最近邻居。随后的基于图形的分组算法,其遵循从右到左的文本线,生成多条候选线。在评估所有线路的质量之后,选择最终的线条表示。在最终步骤中,所有缺陷尚未成为最终行的一部分的爪子被插入到最接近的那个中。实验结果表明,不同作家和风格的文件成功的线分割。

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