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Robust Scene Text Detection with Convolution Neural Network Induced MSER Trees

机译:卷积神经网络诱导的MSER树的鲁棒场景文本检测

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Maximally Stable Extremal Regions (MSERs) have achieved great success in scene text detection. However, this low-level pixel operation inherently limits its capability for handling complex text information efficiently (e. g. connections between text or background components), leading to the difficulty in distinguishing texts from background components. In this paper, we propose a novel framework to tackle this problem by leveraging the high capability of convolutional neural network (CNN). In contrast to recent methods using a set of low-level heuristic features, the CNN network is capable of learning high-level features to robustly identify text components from text-like outliers (e.g. bikes, windows, or leaves). Our approach takes advantages of both MSERs and sliding-window based methods. The MSERs operator dramatically reduces the number of windows scanned and enhances detection of the low-quality texts. While the sliding-window with CNN is applied to correctly separate the connections of multiple characters in components. The proposed system achieved strong robustness against a number of extreme text variations and serious real-world problems. It was evaluated on the ICDAR 2011 benchmark dataset, and achieved over 78% in F-measure, which is significantly higher than previous methods.
机译:最大稳定的极值区域(MSER)在场景文本检测中取得了巨大的成功。然而,这种低级像素操作固有地限制了其有效地处理复杂文本信息的能力(例如,文本或背景成分之间的连接),从而导致难以将文本与背景成分区分开。在本文中,我们提出了一个新颖的框架,以利用卷积神经网络(CNN)的强大功能来解决此问题。与使用一组低级启发式功能的最新方法相比,CNN网络能够学习高级功能,以从类似文本的异常值(例如自行车,窗户或树叶)中稳健地识别文本成分。我们的方法同时利用了MSER和基于滑动窗口的方法。 MSER操作员大大减少了扫描窗口的数量,并增强了对低质量文本的检测。使用带有CNN的滑动窗口来正确分离组件中多个字符的连接。所提出的系统针对许多极端的文字变化和严重的现实世界问题实现了强大的鲁棒性。它在ICDAR 2011基准数据集上进行了评估,在F量测中达到了78%以上,大大高于以前的方法。

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