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Skew Estimation of Document Images Using Bagging

机译:使用装袋法估计文档图像的歪斜

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摘要

This paper proposes a general-purpose method for estimating the skew angles of document images. Rather than to derive a skew angle merely from text lines, the proposed method exploits various types of visual cues of image skew available in local image regions. The visual cues are extracted by Radon transform and then outliers of them are iteratively rejected through a floating cascade. A bagging (bootstrap aggregating) estimator is finally employed to combine the estimations on the local image blocks. Our experimental results show significant improvements against the state-of-the-art methods, in terms of execution speed and estimation accuracy, as well as the robustness to short and sparse text lines, multiple different skews and the presence of nontextual objects of various types and quantities.
机译:本文提出了一种用于估计文档图像偏斜角的通用方法。所提出的方法不是仅从文本行中得出偏斜角,而是利用本地图像区域中可用的各种类型的图像偏斜视觉线索。视觉提示通过Radon变换提取,然后通过浮动级联迭代地拒绝它们的异常值。最后采用装袋(bootstrap聚合)估计器来组合对本地图像块的估计。我们的实验结果表明,与最新技术相比,在执行速度和估计准确性,对短行和稀疏文本行的鲁棒性,多种不同的偏斜以及各种类型的非文本对象的存在方面,均取得了显着改进和数量。

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