Text and Symbol Extraction in Traffic Panel from Natural Scene Images

Zhen-Mao Li, Lin-Lin Huang
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Abstract

Traffic panels contain rich text and symbolic information for transportation and scene understanding. In order to understand the information in panels, fast and robust extraction of the text and symbol is a crucial and essential step. This problem cannot be solved using generic scene text detection methods due to the special layout characteristics, especially in Chinese panels. In this paper, we propose a fast and robust approach for Chinese text and symbol extraction in traffic panels from natural scene images. Given a traffic panel in natural scene, Contrasting Extremal Region (CER) algorithm is applied to extract character candidates which are further filtered by boosting classifier using Histogram Orientation Gradient Features. Since Chinese characters often consist of multiple isolated strokes, a hierarchical clustering process of stroke components is carried out to group isolated strokes into characters using the detected characters as seeds. Next, the Chinese text lines are formed by Distance Metric Learning (DSL) method. In consideration that traffic symbols do not possibly appear in the location of texts, symbols are extracted using two stages boosting classifier after text detection. Experimental results on real traffic images from Baidu Street View demonstrate the effectiveness of the proposed method.
自然场景图像中交通面板的文本和符号提取
交通面板包含丰富的文本和用于交通和场景理解的符号信息。为了理解面板中的信息,快速和稳健的文本和符号提取是至关重要的一步。由于场景文本的特殊布局特点,特别是中文面板的场景文本检测方法无法解决这一问题。本文提出了一种快速、鲁棒的从自然场景图像中提取交通面板中文文本和符号的方法。针对自然场景中的交通面板,采用对比极值区域(CER)算法提取候选字符,利用直方图方向梯度特征增强分类器对候选字符进行过滤。针对汉字往往由多个孤立笔画组成的特点,采用笔画成分分层聚类的方法,以检测到的汉字为种子,将孤立笔画分组成汉字。其次,采用距离度量学习(DSL)方法形成中文文本行。考虑到交通符号不可能出现在文本的位置,在文本检测后使用两阶段增强分类器提取符号。在百度街景真实交通图像上的实验结果验证了该方法的有效性。
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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