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Context-based filtering of document images

机译:基于上下文的文档图像过滤

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摘要

Two statistical context-based filters are introduced for the enhancement of binary document images for compression and recognition. The simple context filter unconditionally changes uncommon pixels in low information contexts, whereas the gain--loss filter (GLF) changes the pixels conditionally depending on whether the gain in compression outweighs the loss of information. The filtering methods alleviate the loss in compression performance caused by digitization noise while preserving the image quality measured as the optical character recognition (OCR) accuracy. The GLF reaches approximately the compression limit estimated by the compression of the noiseless digital original.
机译:引入了两个基于统计上下文的过滤器,以增强用于压缩和识别的二进制文档图像。简单上下文滤波器在低信息上下文中无条件地更改不常见像素,而增益损失滤波器(GLF)根据压缩中的增益是否大于信息丢失来有条件地更改像素。滤波方法减轻了由数字化噪声引起的压缩性能的损失,同时保留了作为光学字符识别(OCR)精度测量的图像质量。 GLF大约达到了通过无噪音数字原件的压缩估算出的压缩极限。

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