基于关系网络的曲线文本检测方法

Chixiang Ma, Zhuoyao Zhong, Lei Sun, Qiang Huo
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引用次数: 8

摘要

本文提出了一种新的基于关系网络的曲线文本检测方法,将其表述为视觉关系检测问题。关键思想是将弯曲文本检测分解为两个子问题,即文本原语检测和相邻文本原语对的链接关系预测。具体而言,首先采用基于无锚区建议网络的文本检测器,从特征金字塔网络的不同特征映射中检测不同尺度的文本原语,并从中选择可管理数量的文本原语对。然后,使用关系网络来预测每个文本原语对是否属于同一个文本实例。最后,根据文本原语对的链接关系,将孤立的文本原语分组为弯曲的文本实例。由于两两链接预测使用了从每个文本原语的边界框及其联合中提取的特征,因此关系网络可以有效地利用更广泛的上下文信息来提高链接预测的准确性。此外,由于相对较远的文本原语之间的链接关系可以被稳健地预测,我们基于关系网络的文本检测器能够检测具有较大字符间空间的文本实例。因此,我们提出的方法不仅在Total-Text和SCUT-CTW1500两个公共曲线文本检测数据集上,而且在MSRA-TD500这个多方向文本检测数据集上都取得了优异的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Relation Network Based Approach to Curved Text Detection
In this paper, a new relation network based approach to curved text detection is proposed by formulating it as a visual relationship detection problem. The key idea is to decompose curved text detection into two subproblems, namely detection of text primitives and prediction of link relationship for each nearby text primitive pair. Specifically, an anchor-free region proposal network based text detector is first used to detect text primitives of different scales from different feature maps of a feature pyramid network, from which a manageable number of text primitive pairs are selected. Then, a relation network is used to predict whether each text primitive pair belongs to a same text instance. Finally, isolated text primitives are grouped into curved text instances based on link relationships of text primitive pairs. Because pairwise link prediction has used features extracted from the bounding boxes of each text primitive and their union, the relation network can effectively leverage wider context information to improve link prediction accuracy. Furthermore, since the link relationships of relatively distant text primitives can be predicted robustly, our relation network based text detector is capable of detecting text instances with large inter-character spaces. Consequently, our proposed approach achieves superior performance on not only two public curved text detection datasets, namely Total-Text and SCUT-CTW1500, but also a multi-oriented text detection dataset, namely MSRA-TD500.
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