面向大规模数字化工作流的质量预测系统

C. Clausner, S. Pletschacher, A. Antonacopoulos
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引用次数: 8

摘要

到目前为止,大规模OCR项目的可行性只能通过在目标文档集合的子集上运行试点研究来评估,并基于精确的地面事实衡量不同工作流程的成功,这在所需的数量上可能是非常昂贵的。本文的前提是,作为一种选择,质量预测可以用来近似给定OCR工作流的成功。因此,提出了一个新的系统,其中分类器是使用元数据、图像和布局特征与测量的成功率(基于最小基础真值)相结合来训练的。随后,只需要文档图像作为质量分数的数字预测的输入(不需要真实值)。通过这种方式,系统可以应用于任意数量的类似(不可见的)文档,以便评估它们是否适合使用特定工作流进行处理。使用历史报纸页面的真实数据集验证了该系统的实用性。
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Quality Prediction System for Large-Scale Digitisation Workflows
The feasibility of large-scale OCR projects can so far only be assessed by running pilot studies on subsets of the target document collections and measuring the success of different workflows based on precise ground truth, which can be very costly to produce in the required volume. The premise of this paper is that, as an alternative, quality prediction may be used to approximate the success of a given OCR workflow. A new system is thus presented where a classifier is trained using metadata, image and layout features in combination with measured success rates (based on minimal ground truth). Subsequently, only document images are required as input for the numeric prediction of the quality score (no ground truth required). This way, the system can be applied to any number of similar (unseen) documents in order to assess their suitability for being processed using the particular workflow. The usefulness of the system has been validated using a realistic dataset of historical newspaper pages.
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