分类前景像素在文档图像

Prateek Sarkar, E. Saund, Jing Lin
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引用次数: 6

摘要

我们提出了一个根据标记类型(如机器打印、手写和噪声)对文档图像中的像素进行分类的系统。分割模块首先将输入图像分割成片段,有时会断开连接的组件。然后,每个片段由自动训练的多阶段分类器进行分类,该分类器速度快,并考虑片段及其邻域的特征。从数百个测量值中自动挑选出与识别相关的特征。我们的系统可以通过示例图像进行训练,其中每个前景像素都有一个“ground-truth”标签。我们的系统的主要区别是在子连接组件级别上对碎片进行分类的准确度,而不是更大的聚合组,如单词或文本行。我们已经训练了这个系统来检测手写、机器打印文本、机器打印图形和噪声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classifying Foreground Pixels in Document Images
We present a system that classifies pixels in a document image according to marking type such as machine print,handwriting, and noise. A segmenter module first splits an input image into fragments, sometimes breaking connected components. Each fragment is then classified by an automatically trained multi-stage classifier that is fast and considers features of the fragment, as well as its neighborhood.Features relevant for discrimination are picked out automatically from among hundreds of measurements. Our system is trainable from example images in which each foreground pixel has a “ground-truth” label. The main distinction of our system is the level of accuracy achieved in classifying fragments at sub-connected component level, rather than larger aggregate groups such as words or text-lines.We have trained this system to detect handwriting, machine print text, machine print graphics, and noise.
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