Text Detection of a Chinese Long and Dense Text Dataset

Huiyu Xiong
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Abstract

In daily life, it is important to interpret information correctly from different types of texts. After applying the neural network to object detection, a breakthrough has been made in natural scene text detection. However, only a few research has focused on dense, long segments of Chinese text. Moreover, there are hardly any datasets that include Chinese text boxes with large gap in aspect ratio and short interval. Considering these, we propose a Network to Detect Chinese Long text (DCLnet) and a Chinese Long and Dense text Dataset (CLD). It can not only accurately detect long and dense Chinese text, but also predict text in arbitrary directions using rotated quadrilateral shapes. In this method, we have improved AdvancedEAST model. The feature extraction part selects Resnet50, one of the latest networks. Additionally, reduce-redundancy module is added before the prediction stage to reduce redundant computations. We conduct several experiments on datasets including ICDAR2015 and CLD. Through comparative analysis, the detection accuracy of the algorithm for long and dense Chinese text is obviously better than the previous methods. It achieves a competitive F-score of 0.761 on CLD dataset.
中文长密文本数据集的文本检测
在日常生活中,从不同类型的文本中正确解读信息是很重要的。将神经网络应用于目标检测后,在自然场景文本检测方面取得了突破。然而,只有少数研究集中在密集,长段的中文文本。此外,几乎没有包含宽高比大、间隔短的中文文本框的数据集。考虑到这些,我们提出了一个中文长文本检测网络(DCLnet)和一个中文长密集文本数据集(CLD)。它不仅可以准确地检测长而密集的中文文本,而且可以利用旋转的四边形形状在任意方向上预测文本。在这种方法中,我们改进了AdvancedEAST模型。特征提取部分选择了最新的网络之一Resnet50。在预测阶段之前增加了reduce-redundancy模块,减少冗余计算。我们在ICDAR2015和CLD数据集上进行了多次实验。通过对比分析,该算法对长而密集的中文文本的检测精度明显优于以往的方法。它在CLD数据集上获得了0.761的竞争f值。
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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