Multi-scale FCN with Cascaded Instance Aware Segmentation for Arbitrary Oriented Word Spotting in the Wild

Dafang He, X. Yang, Chen Liang, Zihan Zhou, Alexander Ororbia, Daniel Kifer, C. Lee Giles
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引用次数: 66

Abstract

Scene text detection has attracted great attention these years. Text potentially exist in a wide variety of images or videos and play an important role in understanding the scene. In this paper, we present a novel text detection algorithm which is composed of two cascaded steps: (1) a multi-scale fully convolutional neural network (FCN) is proposed to extract text block regions, (2) a novel instance (word or line) aware segmentation is designed to further remove false positives and obtain word instances. The proposed algorithm can accurately localize word or text line in arbitrary orientations, including curved text lines which cannot be handled in a lot of other frameworks. Our algorithm achieved state-of-the-art performance in ICDAR 2013 (IC13), ICDAR 2015 (IC15) and CUTE80 and Street View Text (SVT) benchmark datasets.
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基于级联实例感知分割的多尺度FCN随机定向词识别
场景文本检测是近年来备受关注的问题。文本可能存在于各种各样的图像或视频中,并在理解场景中发挥重要作用。在本文中,我们提出了一种新的文本检测算法,该算法由两个级联步骤组成:(1)提出了一种多尺度全卷积神经网络(FCN)来提取文本块区域;(2)设计了一种新的实例(词或行)感知分割,以进一步去除误报并获得词实例。该算法可以精确定位任意方向的文字或文本行,包括许多其他框架无法处理的弯曲文本行。我们的算法在ICDAR 2013 (IC13)、ICDAR 2015 (IC15)和CUTE80以及街景文本(SVT)基准数据集上取得了最先进的性能。
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