Combining Focus Measure Operators to Predict OCR Accuracy in Mobile-Captured Document Images

Marçal Rusiñol, J. Chazalon, J. Ogier
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引用次数: 36

Abstract

Mobile document image acquisition is a new trend raising serious issues in business document processing workflows. Such digitization procedure is unreliable, and integrates many distortions which must be detected as soon as possible, on the mobile, to avoid paying data transmission fees, and losing information due to the inability to re-capture later a document with temporary availability. In this context, out-of-focus blur is major issue: users have no direct control over it, and it seriously degrades OCR recognition. In this paper, we concentrate on the estimation of focus quality, to ensure a sufficient legibility of a document image for OCR processing. We propose two contributions to improve OCR accuracy prediction for mobile-captured document images. First, we present 24 focus measures, never tested on document images, which are fast to compute and require no training. Second, we show that a combination of those measures enables state-of-the art performance regarding the correlation with OCR accuracy. The resulting approach is fast, robust, and easy to implement in a mobile device. Experiments are performed on a public dataset, and precise details about image processing are given.
结合焦点测量算子预测移动捕获文档图像OCR精度
移动文档图像采集是一个新的趋势,在业务文档处理工作流程中引起了严重的问题。这种数字化过程是不可靠的,并且集成了许多必须在移动设备上尽快检测到的失真,以避免支付数据传输费用,并且由于无法在以后重新捕获具有临时可用性的文件而丢失信息。在这种情况下,失焦模糊是主要问题:用户无法直接控制它,并且它严重降低了OCR识别。在本文中,我们专注于焦点质量的估计,以确保文档图像在OCR处理中具有足够的易读性。我们提出了两项贡献,以提高对移动捕获文档图像的OCR精度预测。首先,我们提出了24个焦点度量,从未在文档图像上测试过,计算速度快,不需要训练。其次,我们表明,这些措施的组合可以实现与OCR精度相关的最先进性能。由此产生的方法快速、健壮且易于在移动设备中实现。在一个公共数据集上进行了实验,并给出了图像处理的精确细节。
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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