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Robust Recognition of Degraded Documents Using Character N-Grams

机译:使用字符n-gram的鲁棒识别降级文档

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In this paper we present a novel recognition approach that results in a 15% decrease in word error rate on heavily degraded Indian language document images. OCRs have considerably good performance on good quality documents, but fail easily in presence of degradations. Also, classical OCR approaches perform poorly over complex scripts such as those for Indian languages. We address these issues by proposing to recognize character n-gram images, which are basically groupings of consecutive character/component segments. Our approach is unique, since we use the character n-grams as a primitive for recognition rather than for post processing. By exploiting the additional context present in the character n-gram images, we enable better disambiguation between confusing characters in the recognition phase. The labels obtained from recognizing the constituent n-grams are then fused to obtain a label for the word that emitted them. Our method is inherently robust to degradations such as cuts and merges which are common in digital libraries of scanned documents. We also present a reliable and scalable scheme for recognizing character n-gram images. Tests on English and Malayalam document images show considerable improvement in recognition in the case of heavily degraded documents.
机译:在本文中,我们提出了一种新颖的识别方法,导致在重度降级的印度语言文件图像上的字错误率下降15%。 OCRS在良好的质量文件上具有很大的性能,但在降解的情况下很容易失败。此外,经典的OCR方法在复杂的脚本上表现不佳,例如印度语言。我们通过建议识别字符n-gram图像来解决这些问题,这基本上是连续字符/组件段的分组。我们的方法是唯一的,因为我们使用字符n-gram作为原始的识别而不是用于后处理。通过利用字符N-GRAM图像中存在的附加上下文,我们在识别阶段中的困惑字符之间实现更好的歧义。然后融合从识别成分n-gram获得的标签以获得发出它们的单词的标签。我们的方法本质上对诸如扫描文档的数字图书馆中常见的削减和合并等削减和合并。我们还提出了一种可靠且可扩展的方案,用于识别字符N-GRAM图像。对英语和马拉雅拉姆文档图像的测试表明,在严重退化的文件的情况下表现了相当大的认可。

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