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A Text-Context-Aware CNN Network for Multi-oriented and Multi-language Scene Text Detection

机译:用于多方位和多语言场景文本检测的文本上下文感知的CNN网络

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The existing deep learning based state-of-theart scene text detection methods treat scene texts a type of general objects, or segment text regions directly. The latter category achieves remarkable detection results on arbitrary orientation and large aspect ratios of scene texts based on instance segmentation algorithms. However, due to the lack of context information with consideration of scene text unique characteristics, directly applying instance segmentation to text detection task is prone to result in low accuracy, especially producing false positive detection results. To ease this problem, we propose a novel text-context-aware scene text detection CNN structure, which appropriately encodes channel and spatial attention information to construct context-aware and discriminative feature map for multi-oriented and multi-language text detection tasks. With high representation ability of text context-aware feature map, the proposed instance segmentation based method can not only robustly detect multi-oriented and multi-language text from natural scene images, but also produce better text detection results by greatly reducing false positives. Experiments on ICDAR2015 and ICDAR2017-MLT datasets show that the proposed method has achieved superior performances in precision, recall and F-measure than most of the existing studies.
机译:现有的基于深度学习的最新技术的场景文本检测方法将场景文本视为一般对象的一种,或直接对文本区域进行分割。基于实例分割算法,后一类在场景文本的任意方向和大长宽比方面获得了显着的检测结果。但是,由于缺乏考虑场景文本独特特征的上下文信息,直接将实例分割应用于文本检测任务容易导致准确性降低,特别是产生假阳性检测结果。为了缓解这一问题,我们提出了一种新颖的文本感知上下文场景文本检测CNN结构,该结构可以对通道和空间注意信息进行适当编码,以构造用于多种方位和多语言文本检测任务的上下文感知和区分性特征图。基于文本上下文感知特征图的高表示能力,该基于实例分割的方法不仅可以从自然场景图像中可靠地检测出多方向,多语言的文本,而且可以通过大大减少误报来产生更好的文本检测结果。在ICDAR2015和ICDAR2017-MLT数据集上进行的实验表明,与大多数现有研究相比,该方法在精度,召回率和F量测方面均具有优异的性能。

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