使用一种新的基于模糊的技术从相机捕获的图像中进行文本检测

A. F. Mollah, S. Basu, M. Nasipuri
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引用次数: 9

摘要

从相机捕获的文本嵌入图像中提取文本信息具有广泛的应用。提出了一种基于模糊隶属度的鲁棒文本检测技术。给定的图像被划分为块,分配两种类型的模糊隶属关系。对成员值进行后处理,以便更精细地分类为前景块或背景块。相邻的前景块构成前景组件。然后,使用基于特征的多层感知器将前景组件分类为文本或非文本。实验表明,与假阳性相比,假阴性的数量非常少。该技术的平均召回率为99.75%,准确率为93.75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text detection from camera captured images using a novel fuzzy-based technique
Text information extraction from camera captured text embedded images has a wide variety of applications. In this paper, a fuzzy membership based robust text detection technique is presented. The given image is partitioned into blocks that are assigned two types of fuzyy memberships. The membership values are post-processed for finer classification as foreground block or background block. Adjacent foreground blocks form foreground components. Then, a feature-based Multi Layer Perceptron is used to classify the foreground components as text or non-text. Experiments show that the number of false negative is very small compared to that of the false positives. The technique yields an average of 99.75% recall and 93.75% precision rates.
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