印度脚本的多语言OCR

Minesh Mathew, A. Singh, C. V. Jawahar
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引用次数: 41

摘要

在印度场景中,文档分析系统必须同时支持多种语言。随着印度城市出现多语言现象,通常需要支持双语、三语甚至更多语言。这就要求开发一种多语言OCR系统,它可以无缝地跨印度脚本工作。在我们的方法中,在单词识别之前,在单词级别识别脚本。为此,提出了一种端到端的RNN结构,该结构可以检测脚本并以无分割的方式识别文本。我们为12种印度语言和英语演示了这种方法。可以观察到,即使在类似的架构下,印度语言的表现也比英语差。我们对此进行进一步调查。我们的方法在包含数千页的大型语料库上进行了评估。将印地语OCR与该语言的其他流行OCR进行比较,进一步证明我们的方法的有效性。
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Multilingual OCR for Indic Scripts
In Indian scenario, a document analysis system has to support multiple languages at the same time. With emerging multilingualism in urban India, often bilingual, trilingual or even more languages need to be supported. This demands development of a multilingual OCR system which can work seamlessly across Indic scripts. In our approach the script is identified at word level, prior to the recognition of the word. An end-to-end RNN based architecture which can detect the script and recognize the text in a segmentation-free manner is proposed for this purpose. We demonstrate the approach for 12 Indian languages and English. It is observed that, even with the similar architecture, performance on Indian languages are poorer compared to English. We investigate this further. Our approach is evaluated on a large corpus comprising of thousands of pages. The Hindi OCR is compared with other popular OCRs for the language, as a further testimony for the efficacy of our method.
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