显著特征和假设检验:评估一种新的分割和地址块定位方法

D. Menotti, D. Borges, A. Britto
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引用次数: 4

摘要

本文通过进一步实验对我们的一种基于小波空间特征选择的分割算法进行了改进[9]。目的是在邮政信封中自动分离与背景、邮票、橡皮邮票和地址块相关的区域。首先,利用Mallat算法和Haar基对典型信封图像进行分解。对高频通道输出进行分析,定位突出点,分离背景。采用统计假设检验来确定更一致的区域,以清除遗留的一些噪声。选择的点被投影回原始灰度图像,在那里,小波空间的证据被用来开始一个增长过程,以包括更可能属于邮票、橡皮图章和书写区域的像素。我们修改了由凸点控制的生长过程,结果大大改善,成功率达到97%以上。实验使用来自巴西邮政机构的原始邮政信封,在这里我们报告了440张不同布局和背景的图像的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Salient Features and Hypothesis Testing: evaluating a novel approach for segmentation and address block location
This paper presents a modification with further experiments of a segmentation algorithm based on feature selection in wavelet space of ours [9]. The aim is to automatically separate in postal envelopes the regions related to background, stamps, rubber stamps, and the address blocks. First, a typical image of a postal envelope is decomposed using Mallat algorithm and Haar basis. High frequency channel outputs are analyzed to locate salient points in order to separate the background. A statistical hypothesis test is taken to decide upon more consistent regions in order to clean out some noise left. The selected points are projected back to the original gray level image, where the evidence from the wavelet space is used to start a growing process to include the pixels more likely to belong to the regions of stamps, rubber stamps, and written area. We have modified the growing process controlled by the salient points and the results were greatly improved reaching success rate of over 97%. Experiments are run using original postal envelopes from the Brazilian Post Office Agency, and here we report results on 440 images with many different layouts and backgrounds.
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