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An End-to-End Preprocessor Based on Adversiarial Learning for Mongolian Historical Document OCR

机译:基于蒙古历史文献OCR的逆口学习的端到端预处理

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In Mongolian historical document recognition, preprocessing mainly involves image binarization and denoising. This is a challenging task and greatly effects the accuracy of the recognition result. Concerning the fact that image binarization and denoising are both image-to-image tasks, this paper proposes an end-to-end preprocessor for Mongolian historical document OCR. The preprocessor is trained in an adversarial learning fashion and deal with binarization and denoising simultaneously. The input of the preprocessor is the color image of Mongolian document images, and the output is the clean binary images which can be used for word recognition. The preprocessor was trained on a limited dataset and performed better than the combination of binarization and denoising methods used in earlier Mongolian historical document OCR systems.
机译:在蒙古历史文档识别中,预处理主要涉及图像二值化和去噪。这是一个具有挑战性的任务,大大影响了识别结果的准确性。关于图像二值化和去噪是图像到图像的事实,本文提出了蒙古历史文献OCR的端到端预处理器。预处理器培训以对抗性学习方式培训,并同时处理二值化和脱颖而出。预处理器的输入是蒙古文档图像的彩色图像,输出是可以用于Word识别的清洁二进制图像。预处理器在有限数据集上培训,并且比早期的蒙古历史文献OCR系统中使用的二值化和去噪方法的组合进行了更好。

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