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Reference Text Line Identification Using Gaussian Kernel Extended by Morphological Operations

机译:通过形态学操作扩展了高斯内核的参考文本线识别

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In this paper, new approach for text segmentation, reference text line identification and skew rate estimation by Gaussian kernel is presented. As a result of basic algorithm, defined area exploited for text segmentation and text parameter extraction. To improve text segmentation process, basic method is extended by morphological operations. Furthermore, reference text line is estimated by least square method. Basic and extended algorithm is examined and evaluated under different text skew angles. Results are examined, analyzed and discussed. Proposed algorithm extension showed robustness for different types of skewness.
机译:本文介绍了Gaussian内核的文本分割,参考文本线识别和Skew速率估计的新方法。由于基本算法,用于文本分段和文本参数提取的定义区域。为了改善文本分割过程,基本方法由形态操作扩展。此外,通过最小二乘法估计参考文本线。在不同的文本歪斜角下检查和评估基本和扩展算法。检查,分析和讨论了结果。建议的算法扩展显示了不同类型偏振的鲁棒性。

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