首页> 外文会议>Image Processing, 1995. Proceedings., International Conference on >On the use of duration-corrected N-best hypotheses for text recognition in gray-scale document images
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On the use of duration-corrected N-best hypotheses for text recognition in gray-scale document images

机译:关于使用持续时间校正的N最佳假设进行灰度文档图像中的文本识别

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The pseudo two dimensional hidden Markov model (PHMM) is extended to directly recognize poorly-printed gray-scale document images. The N-best hypotheses search, coupled with duration correction, is also developed to find best candidates. Experimental results have demonstrated that the performance of the new system has been significantly improved when compared to the original PHMM system [Kuo and Agazzi, 1994] using binary images as inputs. The recognition rate improves from 97.7% to 100%, over a testing set with similar blur and noise conditions as the training set. For a testing range far outside the training one, it improves from 89.59% to 98.51%, which also demonstrates the robustness of the proposed system.
机译:伪二维隐藏马尔可夫模型(PHMM)得以扩展,可以直接识别打印质量较差的灰度文档图像。还开发了N个最佳假设搜索以及持续时间校正,以找到最佳候选者。实验结果表明,与使用二进制图像作为输入的原始PHMM系统相比,新系统的性能得到了显着提高[Kuo and Agazzi,1994]。在具有与训练集相似的模糊和噪声条件的测试集上,识别率从97.7%提高到100%。对于远远超出训练范围的测试范围,它从89.59%提高到98.51%,这也证明了所提出系统的鲁棒性。

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