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Multi Level Feature Priority algorithm based text extraction from heterogeneous and hybrid textual images

机译:基于多级特征优先算法的异类和混合文本图像文本提取

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摘要

This paper presents a unified approach for the extraction of text from heterogeneous and hybrid textual images (both scene text and caption text in an image) and document images with variations in illumination, transformation/perspective projection, font size and radially changing/angular text. The strength of this technique lies in producing small number of features at less running time for the extraction of text from heterogeneous images in various priority levels. Proposed feature selection algorithm is evaluated with three common Machine-Learning (ML) algorithms and effectiveness is shown by comparing with three feature selection methods. The qualitative analysis proves the encouraging performance of the proposed text extraction system in comparison with the edge-, Connected-Component- (CC) and texture-based text extraction algorithm.
机译:本文提出了一种统一的方法,用于从异构文本和混合文本图像(图像中的场景文本和标题文本)和具有照明,变换/透视投影,字体大小和径向变化/角度文本变化的文档图像中提取文本。该技术的优势在于,可以在更少的运行时间上生成少量特征,以便从各种优先级的异构图像中提取文本。通过三种常见的机器学习(ML)算法对提出的特征选择算法进行了评估,并通过与三种特征选择方法进行比较显示了其有效性。定性分析证明了与边缘,连接分量(CC)和基于纹理的文本提取算法相比,所提出的文本提取系统具有令人鼓舞的性能。

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