A Robust Segmentation Technique for Line, Word and Character Extraction from Kannada Text in Low Resolution Display Board Images

S. Angadi, M. Kodabagi
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引用次数: 14

Abstract

Reliable extraction/segmentation of text lines, words and characters is one of the very important steps for development of automated systems for understanding the text in low resolution display board images. In this paper, a new approach for segmentation of text lines, words and characters from Kannada text in low resolution display board images is presented. The proposed method uses projection profile features and on pixel distribution statistics for segmentation of text lines. The method also detects text lines containing consonant modifiers and merges them with corresponding text lines, and efficiently separates overlapped text lines as well. The character extraction process computes character boundaries using vertical profile features for extracting character images from every text line. Further, the word segmentation process uses k-means clustering to group inter character gaps into character and word cluster spaces, which are used to compute thresholds for extracting words. The method also takes care of variations in character and word gaps. The proposed methodology is evaluated on a data set of 1008 low resolution images of display boards containing Kannada text captured from 2 mega pixel cameras on mobile phones at various sizes 240x320, 600x800 and 900x1200. The method achieves text line segmentation accuracy of 97.17%, word segmentation accuracy of 97.54% and character extraction accuracy of 99.09%. The proposed method is tolerant to font variability, spacing variations between characters and words, absence of free segmentation path due to consonant and vowel modifiers, noise and other degradations. The experimentation with images containing overlapped text lines has given promising results.
从低分辨率显示板图像中提取卡纳达语文本的行、词和字符的鲁棒分割技术
可靠地提取/分割文本行、词和字符是开发低分辨率显示板图像文本理解自动化系统的重要步骤之一。本文提出了一种从低分辨率显示板图像中提取卡纳达语文本行、词和字符的新方法。该方法利用投影轮廓特征和像素分布统计信息对文本行进行分割。该方法还可以检测包含辅音修饰语的文本行,并将其与相应的文本行合并,并有效地分离重叠的文本行。字符提取过程使用垂直轮廓特征计算字符边界,以便从每个文本行提取字符图像。此外,分词过程使用k-means聚类将字符间隙分组为字符和词簇空间,用于计算提取单词的阈值。该方法还考虑到字符和单词间隔的变化。该方法在1008张低分辨率图像的数据集上进行了评估,这些图像来自手机上的200万像素相机,尺寸分别为240 × 320、600 × 800和900 × 1200,其中包含卡纳达语文本。该方法的文本行分割准确率为97.17%,分词准确率为97.54%,字符提取准确率为99.09%。该方法可以容忍字体的变化、字符和单词之间的间距变化、由于辅音和元音修饰语而缺乏自由分割路径、噪声和其他退化。对包含重叠文本行的图像进行实验得到了令人满意的结果。
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