Automatic character labeling for camera captured document images

Wei-liang Fan, K. Kise, M. Iwamura
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Abstract

Character groundtruth for camera captured documents is crucial for training and evaluating advanced OCR algorithms. Manually generating character level groundtruth is a time consuming and costly process. This paper proposes a robust groundtruth generation method based on document retrieval and image registration for camera captured documents. We use an elastic non-rigid alignment method to fit the captured document image which relaxes the flat paper assumption made by conventional solutions. The proposed method allows building very large scale labeled camera captured documents dataset, without any human intervention. We construct a large labeled dataset consisting of 1 million camera captured Chinese character images. Evaluation of samples generated by our approach showed that 99.99% of the images were correctly labeled, even with different distortions specific to cameras such as blur, specularity and perspective distortion.
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自动字符标签相机捕获的文件图像
相机捕获文档的特征真实值对于训练和评估高级OCR算法至关重要。手动生成角色级别的groundtruth是一个耗时且昂贵的过程。针对相机捕获的文档,提出了一种基于文档检索和图像配准的鲁棒基础真值生成方法。我们使用弹性非刚性对齐方法来拟合捕获的文档图像,这打破了传统方法对平面纸张的假设。该方法允许在没有任何人为干预的情况下构建超大规模的标记相机捕获文档数据集。我们构建了一个由100万张相机捕获的汉字图像组成的大型标记数据集。通过我们的方法生成的样本的评估表明,99.99%的图像被正确标记,即使有不同的相机特定的扭曲,如模糊,镜面和透视失真。
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