基于隐式分割的深度学习分类器的无约束阿拉伯语场景文本分析子采样方法

S. Ahmed, Z. Malik, M. I. Razzak, R. Yusof
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引用次数: 3

摘要

从自然场景图像中提取文本仍然是一项繁琐的任务。本文对草书场景文本分析提出了一种新颖的解决方案,特别是对无约束环境下出现的阿拉伯语场景文本的识别。采用分层次采样技术,通过对给定场景文本样本的窗口大小进行子采样来研究潜在问题。通过考虑阿拉伯文字的复杂性,提出了深度学习架构。所进行的实验在字符水平上的准确率为96.81%。本文还概述了阿拉伯语场景文本与手写和印刷数据的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sub-sampling Approach for Unconstrained Arabic Scene Text Analysis by Implicit Segmentation based Deep Learning Classifier
The text extraction from the natural scene image is still a cumbersome task to perform. This paper presents a novel contribution and suggests the solution for cursive scene text analysis notably recognition of Arabic scene text appeared in the unconstrained environment. The hierarchical sub-sampling technique is adapted to investigate the potential through sub-sampling the window size of the given scene text sample. The deep learning architecture is presented by considering the complexity of the Arabic script. The conducted experiments present 96.81% accuracy at the character level. The comparison of the Arabic scene text with handwritten and printed data is outlined as well.
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