场景文本检测的整体垂直区域建议网络

Xu Chen, Qiang Guo, Shuohao Li, Jun Zhang
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引用次数: 1

摘要

场景文本检测是计算机视觉领域的一个重要研究课题。它在许多领域都有很大的应用价值。受Faster-RCNN是一种流行的目标检测方法的启发,我们考虑将区域建议网络(RPN)方法应用于场景文本检测,因为文本可以被视为公共目标。RPN的核心是用不同大小的锚点检测不同大小的目标。然而,当直接应用RPN时,很难设计许多不同尺度的锚点来满足不同大小的文本框的要求。基于以上原因,我们调整锚点设置,利用垂直锚点来打破感受野的限制。此外,我们参考了在神经网络的不同步骤产生侧输出结果的多尺度网络整体嵌套边缘检测(HED)。底层具有较小的接受域,代表图像中小文本区域的特征。高阶侧输出的接受域更大,可以更好地处理大尺寸的文本区域。我们结合RPN和HED方法的优点,提出了一种用于场景文本检测的整体垂直建议区域网络(HVRPN),并在ICDAR03和ICDAR11中取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Holistic Vertical Regional Proposal Network for scene text detection
Scene text detection is an important research problem in computer vision community. It has great application value in many fields. Inspired by Faster-RCNN which is a popular method for object detection, we consider to apply the Regional Proposal Network (RPN) method for scene text detection because text can be regarded as the common object. The core of RPN is to detect different sizes of objects with different sizes of anchors. However, when the RPN is applied directly, it is difficult to design many different scale anchors to meet the requirements of different sizes of text boxes. For the above reasons, we adjust the anchor settings and take advantage of vertical anchor to break the restrictions of receptive field. In addition, we refer to the multi-scale network Holistically-Nested Edge Detection (HED) which produce side-output results at different steps of the neural network. The bottom layers have a smaller receptive field, which represent the features of small text area in image. The receptive field of the high-level side-outputs is larger, and it can handle the large-size text area better. We combine the advantages of RPN and HED methods and propose a Holistic Vertical Proposal Regional Network (HVRPN) for scene text detection, and our model shows good results in ICDAR03 and ICDAR11.
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