Robustness Assessment of Texture Features for the Segmentation of Ancient Documents

Maroua Mehri, V. C. Kieu, Mohamed Mhiri, P. Héroux, Petra Gomez-Krämer, M. Mahjoub, R. Mullot
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引用次数: 7

Abstract

For the segmentation of ancient digitized document images, it has been shown that texture feature analysis is a consistent choice for meeting the need to segment a page layout under significant and various degradations. In addition, it has been proven that the texture-based approaches work effectively without hypothesis on the document structure, neither on the document model nor the typographical parameters. Thus, by investigating the use of texture as a tool for automatically segmenting images, we propose to search homogeneous and similar content regions by analyzing texture features based on a multiresolution analysis. The preliminary results show the effectiveness of the texture features extracted from the autocorrelation function, the Grey Level Co-occurrence Matrix (GLCM), and the Gabor filters. In order to assess the robustness of the proposed texture-based approaches, images under numerous degradation models are generated and two image enhancement algorithms (non-local means filtering and superpixel techniques) are evaluated by several accuracy metrics. This study shows the robustness of texture feature extraction for segmentation in the case of noise and the uselessness of a demising step.
纹理特征在古代文献分割中的鲁棒性评估
对于古代数字化文档图像的分割,纹理特征分析是一种一致的选择,可以满足在严重和各种退化情况下分割页面布局的需要。此外,已经证明基于纹理的方法可以有效地工作,而不需要对文档结构、文档模型和排版参数进行假设。因此,通过研究纹理作为自动分割图像的工具,我们提出通过基于多分辨率分析的纹理特征来搜索同质和相似的内容区域。初步结果表明,从自相关函数、灰度共生矩阵(GLCM)和Gabor滤波器中提取纹理特征是有效的。为了评估所提出的基于纹理的方法的鲁棒性,生成了多种退化模型下的图像,并通过几个精度指标评估了两种图像增强算法(非局部均值滤波和超像素技术)。该研究显示了纹理特征提取在噪声和消亡步骤无用的情况下对分割的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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