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New COLD Feature Based Handwriting Analysis for Enthnicity/Nationality Identification

机译:基于新的基于COLD特征的民族/国籍识别手写分析

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Identifying crime for forensic investigating teams when crimes involve people of different nationals is challenging. This paper proposes a new method for ethnicity (nationality) identification based on Cloud of Line Distribution (COLD) features of handwriting components. The proposed method, at first, uses tangent angle of the contour pixels in each row and the mean of intensity values of each row for segmenting text lines. For segmented text lines, we use tangent angle and direction of base lines to remove rule lines in the image. We use polygonal approximation for finding dominant points for contours of edge components. Then the proposed method connects the nearest dominant points of every dominant point, which results in line segments of dominant point pairs. For each line segment, the proposed method estimates angle and length, which gives a point in polar domain. For all the line segments, the proposed method generates dense points in polar domain, which results in COLD distribution. As character component shapes change, according to nationals, the shape of the distribution changes. This observation is extracted based on distance from pixels of distribution to Principal Axis of the distribution. Then the features are subjected to an SVM classifier for identifying nationals. Experiments are conducted on a complex dataset, which show the proposed method is effective and outperforms the existing method.
机译:当犯罪涉及不同国籍的人时,为法医侦查队识别犯罪具有挑战性。本文提出了一种基于手写成分的线分布云特征的种族(民族)识别新方法。首先,所提出的方法使用每行轮廓像素的切线角和每行强度值的平均值来分割文本行。对于分段的文本行,我们使用切线角度和基线的方向来删除图像中的规则线。我们使用多边形逼近法找到边缘分量轮廓的主要点。然后,所提出的方法连接每个主要点的最近的主要点,这导致了主要点对的线段。对于每个线段,所提出的方法估计角度和长度,从而给出极域中的一个点。对于所有线段,所提出的方法都会在极域中生成密集点,从而导致COLD分布。根据国民的不同,随着字符成分形状的变化,分布的形状也发生变化。基于从分布的像素到分布的主轴的距离来提取该观察结果。然后对特征进行SVM分类器识别国民。在复杂的数据集上进行的实验表明,该方法是有效的,并且优于现有方法。

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