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Learning Surrogate Models of Document Image Quality Metrics for Automated Document Image Processing

机译:学习用于自动文档图像处理的文档图像质量度量的替代模型

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Computation of document image quality metrics often depends upon the availability of a ground truth image corresponding to the document. This limits the applicability of quality metrics in applications such as hyperparameter optimization of image processing algorithms that operate on-the-fly on unseen documents. This work proposes the use of surrogate models to learn the behavior of a given document quality metric on existing datasets where ground truth images are available. The trained surrogate model can later be used to predict the metric value on previously unseen document images without requiring access to ground truth images. The surrogate model is empirically evaluated on the Document Image Binarization Competition (DIBCO) and the Handwritten Document Image Binarization Competition (H-DIBCO) datasets.
机译:文档图像质量度量的计算通常取决于与文档相对应的地面真实图像的可用性。这限制了质量指标在应用程序中的适用性,例如在看不见的文档上即时运行的图像处理算法的超参数优化。这项工作提出了使用替代模型来学习给定文档质量度量在现有基础数据可用的现有数据集上的行为。训练后的替代模型随后可用于预测以前看不见的文档图像上的度量值,而无需访问基本事实图像。在文档图像二值化竞赛(DIBCO)和手写文档图像二值化竞赛(H-DIBCO)数据集上以经验方式评估替代模型。

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