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Handwriting image enhancement using local learning windowing, Gaussian Mixture Model and k-means clustering

机译:使用局部学习窗口,高斯混合模型和k均值聚类的手写图像增强

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摘要

In this paper, a new approach is proposed to enhance the handwriting image by using learning-based windowing contrast enhancement and Gaussian Mixture Model (GMM). A fixed size window moves over the handwriting image and two quantitative methods which are discrete entropy (DE) and edge-based contrast measure (EBCM) are used to estimate the quality of each patch. The obtained results are used in the unsupervised learning method by using k-means clustering to assign the quality of handwriting as bad (if it is low contrast) or good (if it is high contrast). After that, if the corresponding patch is estimated as low contrast, a contrast enhancement method is applied to the window to enhance the handwriting. GMM is used as a final step to smoothly exchange information between original and enhanced images to discard the artifacts to represent the final image. The proposed method has been compared with the other contrast enhancement methods for different datasets which are Swedish historical documents, DIBCO2010, DIBCO2012 and DIBCO2013. Results illustrate that proposed method performs well to enhance the handwriting comparing to the existing contrast enhancement methods. © 2016 IEEE.
机译:本文提出了一种新的方法,通过使用基于学习的加窗对比增强和高斯混合模型(GMM)来增强手写图像。一个固定大小的窗口在手写图像上移动,并且使用两种定量方法(离散熵(DE)和基于边缘的对比度测量(EBCM))来估计每个贴片的质量。通过使用k均值聚类将笔迹的质量分配为差(如果对比度低)或好(如果对比度高),则将所得结果用于无监督学习方法。此后,如果将相应的补丁估计为低对比度,则将对比度增强方法应用于窗口以增强笔迹。 GMM被用作在原始图像和增强图像之间平滑交换信息的最后步骤,以丢弃伪像代表最终图像。将该方法与瑞典历史文献DIBCO2010,DIBCO2012和DIBCO2013针对不同数据集的其他对比度增强方法进行了比较。结果表明,与现有的对比度增强方法相比,该方法在增强笔迹方面表现良好。 ©2016 IEEE。

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