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首页> 外文期刊>International Journal on Document Analysis and Recognition (IJDAR) >Nonlinear model identification and see-through cancelation from recto–verso data
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Nonlinear model identification and see-through cancelation from recto–verso data

机译:非线性模型识别和正反数据的透视消除

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摘要

The problem of see-through cancelation in digital images of double-sided documents is addressed. We show that a nonlinear convolutional data model proposed elsewhere for moderate show-through can also be effective on strong back-to-front interferences, provided that the recto and verso pure patterns are estimated jointly. To this end, we propose a restoration algorithm that does not need any classification of the pixels. The see-through PSFs are estimated off-line, and an iterative procedure is then employed for a joint estimation of the pure patterns. This simple and fast algorithm can be used on both grayscale and color images and has proved to be very effective in real-world cases. The experimental results we report in this paper demonstrate that our algorithm outperforms the ones based on linear models with no need to tune free parameters and remains computationally inexpensive despite the nonlinear model and the iterative solution adopted. Strategies to overcome some of the residual difficulties are also envisaged.
机译:解决了双面文档的数字图像中的透明消除问题。我们表明,在其他地方提出的用于适度展示的非线性卷积数据模型也可以在强烈的前后干扰中有效,前提是可以共同估计直肠和反式的模式。为此,我们提出了一种不需要像素分类的恢复算法。离线估计透视的PSF,然后采用迭代过程对纯模式进行联合估计。这种简单而快速的算法可用于灰度和彩色图像,并已证明在实际情况下非常有效。我们在本文中报告的实验结果表明,我们的算法优于基于线性模型的算法,无需调整自由参数,尽管采用了非线性模型和迭代解法,但在计算上仍然便宜。还设想了克服一些剩余困难的策略。

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