基于纹理相似度指数的文档图像质量评价

Alireza Alaei, Donatello Conte, M. Blumenstein, R. Raveaux
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引用次数: 11

摘要

提出了一种基于纹理特征的全参考文献图像质量评价方法。局部二值模式(LBP)作为纹理特征分别在局部和全局两级提取。对于每个提取的LBP特征集,计算一个称为LBP相似指数(LBPSI)的相似性度量。进一步提出了一种加权策略来改进基于局部LBP特征得到的LBPSI。然后将为局部和全局特征计算的LBPSI结合起来得到最终的LBPSI,这也为DIQA提供了最佳性能。为了评估所提出的方法,使用了两个不同的数据集。第一个数据集由文档图像组成,而第二个数据集包含自然场景图像。平均人意见得分(MHOS)被认为是绩效评估的基础真理。结果表明,该方法在自动/准确预测图像质量方面有显著提高,特别是在基于文档图像的数据集上。
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Document Image Quality Assessment Based on Texture Similarity Index
In this paper, a full reference document image quality assessment (FR DIQA) method using texture features is proposed. Local binary patterns (LBP) as texture features are extracted at the local and global levels for each image. For each extracted LBP feature set, a similarity measure called the LBP similarity index (LBPSI) is computed. A weighting strategy is further proposed to improve the LBPSI obtained based on local LBP features. The LBPSIs computed for both local and global features are then combined to get the final LBPSI, which also provides the best performance for DIQA. To evaluate the proposed method, two different datasets were used. The first dataset is composed of document images, whereas the second one includes natural scene images. The mean human opinion scores (MHOS) were considered as ground truth for performance evaluation. The results obtained from the proposed LBPSI method indicate a significant improvement in automatically/accurately predicting image quality, especially on the document image-based dataset.
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