基于计算机视觉的图像变换检测多语种标识牌

Shaik Moinuddin Ahmed, Abdul Wahid
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引用次数: 0

摘要

用乌尔都语书写的文字是草书,与阿拉伯语、汉语和印地语同属于非拉丁语系。由于乌尔都语文本的检测和定位困难,识别自然场景照片中的单个结扎是困难的。自然场景照片文本识别的计算机视觉挑战是一个难点。文本大小、颜色、字体、方向、背景、照明和不均匀照明的变化使得自然场景照片中的文本识别比光学字符识别(OCR)更加困难。为了解决在自然场景中识别乌尔都语、印地语和英语文本的问题,我们建议在本研究中使用图像变换技术。乌尔都语的文本识别比非草书更具挑战性,因为有各种各样的因素,包括不同的写作风格,同一字母的许多版本,延伸和链接的文本,结扎重叠,对角文本和精简文本。在自然场景照片中实现单词识别的深度学习模型可以受益于所提出的图像变换技术,包括旋转、平移、调整大小、透视变换、裁剪、扩张/侵蚀和兴趣区域(ROI)选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Transformation based on Computer Vision to detect Multilingual Sign Board
Text written in Urdu is cursive and belongs to the same non-Latin family as Arabic, Chinese, and Hindi. Recognizing individual ligatures in natural scene photographs is difficult due to the difficulty of detecting and localizing Urdu text. The computer vision challenge of text recognition in photographs of natural scenes is difficult. Variations in text size, color, font, orientation, backdrop, illumination, and uneven lighting make text recognition in photos of natural scenes more difficult than optical character recognition (OCR). As a solution to the issue of identifying Urdu, Hindi, and English text in natural scenes, we propose using an Image Transformation technique in this piece of study. Text recognition in Urdu is more challenging than it is with non-cursive scripts due to a variety of factors, including different writing styles, many versions of the same letter, stretched and linked text, ligature overlapping, diagonal text, and condensed text. Implementing deep learning models for word recognition in natural scene photographs can benefit from the proposed image transformation techniques, which include rotation, translation, resizing, perspective transform, cropping, dilation/erosion, and Region of Interest (ROI) selection.
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