Background Line Detection with A Stochastic Model

Yefeng Zheng, Huiping Li, D. Doermann
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引用次数: 3

Abstract

Background lines often exist in textual documents. It is important to detect and remove those lines so text can be easily segmented and recognized. A stochastic model is proposed in this paper which incorporates the high level contextual information to detect severely broken lines. We observed that 1) background lines are parallel, and 2) the vertical gaps between any two neighboring lines are roughly equal with small variance. The novelty of our algorithm is we use a HMM model to model the projection profile along the estimated skew angle, and estimate the optimal positions of all background lines simultaneously based on the Viterbi algorithm. Compared with our previous deterministic model based approach [15], the new method is much more robust and detects about 96.8% background lines correctly in our Arabic document database.
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基于随机模型的背景线检测
文本文件中经常存在背景线。检测和删除这些行是很重要的,这样文本就可以很容易地分割和识别。本文提出了一种包含高级上下文信息的随机模型来检测严重折线。我们观察到1)背景线是平行的,2)任意两条相邻线之间的垂直间隙大致相等,方差很小。该算法的新颖之处在于利用HMM模型沿估计的倾斜角度对投影轮廓进行建模,并基于Viterbi算法同时估计所有背景线的最优位置。与我们之前基于确定性模型的方法[15]相比,新方法鲁棒性更强,在我们的阿拉伯语文档数据库中正确检测出96.8%的背景线。
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