Classification of machine-printed and handwritten addresses on Korean mail piece images using geometric features

Seung-Ick Jang, Seon-Hwa Jeong, Yun-Seok Nam
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引用次数: 32

Abstract

We propose an effective method for classifying machine-printed and handwritten addresses on Korean mail piece images. It is of vital importance to know if an input image is machine-printed or handwritten in such applications as address reading, form processing, FAX routing, and etc., since approaches for handwritten images are developed quite differently from those for machine-printed images. Our method consists of three blocks: valid connected component grouping, feature extraction and classification. A set of features related to width and position of groups of valid connected components is used for the classification based on a multi-layer perceptrons network. The experiment done with address images extracted from Korean live mail piece images has demonstrated the superiority of the proposed method. The correct classification rate for 3,147 testing images was about 98.9%.
利用几何特征对韩国邮件图像上的机印和手写地址进行分类
我们提出了一种有效的方法来分类机器打印和手写的地址在韩国邮件图像。在地址读取、表单处理、FAX路由等应用程序中,知道输入图像是机器打印的还是手写的是至关重要的,因为手写图像的开发方法与机器打印图像的开发方法大不相同。我们的方法包括三个部分:有效连接组件分组、特征提取和分类。基于多层感知器网络,利用一组与有效连接组件组的宽度和位置相关的特征进行分类。用韩语邮件实景图像提取的地址图像进行了实验,验证了该方法的优越性。对3147张测试图像的正确分类率约为98.9%。
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