印文写作者识别:一种基于笔画分布的方法

Santhoshini Reddy, Chris Andrew Gadde, U. Pal, Alireza Alaei, Viswanath Pulabaigari
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引用次数: 4

摘要

本文提出用笔画字母表上的笔画分布来表示脱机手写文档,用于作者识别。一种数据驱动的笔画字母表创建方法如下:从图像中提取笔画,使用回归方法,提取的笔画在向量空间中表示为固定长度的向量,将笔画聚类到笔画类别中创建笔画字母表。本文提出了一种具有新的聚类分数的聚类方法,该方法可以自动识别最优数量的聚类(类别)。对于给定的文档,基于笔画字母表中元素出现的频率,将创建一个直方图,表示作者的写作风格。支持向量机用于分类目的。用两种不同的印度语言,即泰卢固语和卡纳达语写的离线手写文件被考虑用于实验。所得结果与文献中其他方法相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Writer Identification in Indic Scripts: A Stroke Distribution Based Approach
This paper proposes to represent an offline handwritten document with a distribution of strokes over an alphabet of strokes for writer identification. A data driven approach for stroke alphabet creation is done as follows: strokes are extracted from the image, using a regression method, extracted strokes are represented as fixed length vectors in a vector space, strokes are clustered into stroke categories to create a stroke alphabet. The paper proposes a clustering method with a new clustering score whereby an optimal number of clusters (categories) are automatically identified. For a given document, based on the frequency of occurrence of elements in the stroke alphabet, a histogram is created that represents the writer's writing style. Support Vector Machine is used for the classification purpose. Offline handwritten documents written in two different Indic languages, viz., Telugu and Kannada, were considered for the experimentation. Results comparable to other methods in the literature are obtained from the proposed method.
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