Abhash Sinha, Martin Jenckel, S. S. Bukhari, A. Dengel
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引用次数: 2
摘要
光学字符识别(OCR)通过使用深度学习进行字符识别,达到了最先进的性能。深度学习技术需要大量的数据和基础事实。在可用的数据中,有一小部分也必须用于验证目的。为历史文献准备事实是昂贵的,因此数据的可用性是最重要的。Jenckel et al. Jenckel提出了使用所有可用数据来训练OCR模型的想法,为了验证,他们从OCR模型的Softmax层生成输入图像;使用解码器设置,可用于与原始输入图像进行比较,以验证OCR模型。在本文中,我们探索了使用生成对抗网络(gan) gan直接从OCR模型获得的文本生成图像的可能性,而不是使用Softmax层,这对于所有基于深度学习的OCR模型来说都是不可访问的。使用文本直接生成输入图像给我们的好处是使用这个管道的任何OCR模型,即使Softmax层是不可访问的。在结果部分,我们展示了使用gan进行无监督OCR模型评估的现状。
Optical Character Recognition (OCR) has achieved its state-of-the-art performance with the use of Deep Learning for character recognition. Deep Learning techniques need large amount of data along with ground truth. Out of the available data, small portion of it has to be used for validation purpose as well. Preparing ground truth for historical documents is expensive and hence availability of data is of utmost concern. Jenckel et al. jenckel came up with an idea of using all the available data for training the OCR model and for the purpose of validation, they generated the input image from Softmax layer of the OCR model; using the decoder setup which can be used to compare with the original input image to validate the OCR model. In this paper, we have explored the possibilities of using Generative Adversial Networks (GANs) gan for generating the image directly from the text obtained from OCR model instead of using the Softmax layer which is not always accessible for all the Deep Learning based OCR models. Using text directly to generate the input image back gives us the advantage to use this pipeline for any OCR models even whose Softmax layer is not accessible. In the results section, we have shown that the current state of using GANs for unsupervised OCR model evaluation.