场景图像文本理解的全卷积网络

Q4 Computer Science
Dena Bazazian
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引用次数: 1

摘要

场景图像中的文本理解在计算机视觉领域受到了广泛的关注,由于文本承载着丰富的场景内容和上下文的语义信息,因此文本理解在许多应用中都是一项重要的任务。例如,在场景中阅读文本可以应用于自动驾驶、场景理解或帮助视障人士。场景文本理解的总体目标是对场景图像中的文本进行定位和识别。文本区域首先通过训练好的检测器模型定位到原始图像中,然后输入到识别模块中。定位任务和识别任务是高度相关的,因为定位不准确会影响识别任务。本文的主要目的是设计高效的场景文本理解方法。我们研究了深度学习的最新成果如何推进文本理解管道。近年来,全卷积网络及其衍生方法在语义分割和像素级分类任务上取得了显著的成绩。因此,我们利用FCN方法的优势来检测和识别自然场景图像中的文本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fully Convolutional Networks for Text Understanding in Scene Images
Text understanding in scene images has gained plenty of attention in the computer vision community and it is an important task in many applications as text carries semantically  rich  information  about  scene  content  and  context.   For  instance, reading text in a scene can be applied to autonomous driving, scene understanding or assisting visually impaired people. The general aim of scene text understanding is to localize and recognize text in scene images. Text regions are first localized in the original image by a trained detector model and afterwards fed into a recognition module. The tasks of localization and recognition are highly correlated since an inaccurate localization can affect the recognition task. The main purpose of this thesis is to devise efficient methods for scene text understanding. We investigate how the latest results on deep learning can advance text understanding pipelines. Recently, Fully Convolutional Networks (FCNs) and derived methods have achieved a significant performance on semantic segmentation and pixel level classification tasks. Therefore, we took benefit of the strengths of FCN approaches in order to detect and recognize text in natural scenes images.
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来源期刊
Electronic Letters on Computer Vision and Image Analysis
Electronic Letters on Computer Vision and Image Analysis Computer Science-Computer Vision and Pattern Recognition
CiteScore
2.50
自引率
0.00%
发文量
19
审稿时长
12 weeks
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