Text-background decomposition for thai text localization and recognition in natural scenes

K. Woraratpanya, Kitsuchart Pasupa, Ungsumalee Suttapakti, Pimlak Boonchukusol, Taravichet Titijaroonroj, Rattaphon Hokking, Y. Kuroki, Yasushi Kato
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引用次数: 10

Abstract

Thai text localization and recognition in natural scenes is still a grand challenge in current applications. However, the efficiency of recognition rates depends on text localization, i.e., the higher purity of text-background decomposition leads to the higher accuracy rate of character recognition. In order to achieve this purpose, the text-background decomposition methods, namely adaptive boundary clustering (ABC) and n-point boundary clustering (n-PBC), are proposed to improve a precision of text localization. These methods are evaluated by self-entropy for purity measure. Based on 300 test images, the experimental results demonstrate that the ABC method achieves the very low self-entropy, i.e., the low self-entropy implies the good decomposition of text and background. Furthermore, based on 8,077 characters in natural scene test images, the ABC method helps increase the precision of text localization and improves the accuracy rate of character recognition, when compared to the conventional methods.
基于文本背景分解的自然场景中泰语文本定位与识别
自然场景中泰语文本的定位和识别在当前的应用中仍然是一个巨大的挑战。然而,识别率的效率取决于文本的本地化,即文本背景分解的纯度越高,字符识别的准确率就越高。为了实现这一目标,本文提出了文本背景分解方法,即自适应边界聚类(ABC)和n点边界聚类(n-PBC),以提高文本定位的精度。用自熵法对这些方法进行了纯度评价。基于300张测试图像的实验结果表明,ABC方法实现了非常低的自熵,即低的自熵意味着文本和背景的良好分解。此外,基于自然场景测试图像中的8077个字符,与传统方法相比,ABC方法提高了文本定位的精度,提高了字符识别的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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