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Combining Contour Based Orientation and Curvature Features for Writer Recognition

机译:结合基于轮廓的方向和曲率特征进行作家识别

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This paper presents an effective method for writer recognition in handwritten documents. We have introduced a set of features that are extracted from two different representations of the contours of handwritten images. These features mainly capture the orientation and curvature information at different levels of observation, first from the chain code sequence of the contours and then from a set of polygons approximating these contours. Two writings are then compared by computing the distances between their respective features. The system trained and tested on a data set of 650 writers exhibited promising results on writer identification and verification.
机译:本文提出了一种有效的手写文档识别方法。我们引入了一组特征,这些特征是从手写图像轮廓的两种不同表示中提取的。这些特征主要从轮廓的链码序列开始,然后从逼近这些轮廓的一组多边形中捕获不同观察级别的方向和曲率信息。然后通过计算两个特征之间的距离来比较两个著作。该系统在650位作者的数据集上进行了培训和测试,在作者识别和验证方面显示出可喜的结果。

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