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A novel scene text detection algorithm based on convolutional neural network

机译:一种基于卷积神经网络的新颖场景文本检测算法

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Candidate text region extraction plays a critical role in convolutional neural network (CNN) based text detection from natural images. In this paper, we propose a CNN based scene text detection algorithm with a new text region extractor. The so called candidate text region extractor I-MSER is based on Maximally Stable Extremal Region (MSER), which can improve the independency and completeness of the extracted candidate text regions. Design of I-MSER is motivated by the observation that text MSERs have high similarity and are close to each other. The independency of candidate text regions obtained by I-MSER is guaranteed by selecting the most representative regions from a MSER tree which is generated according to the spatial overlapping relationship among the MSERs. A multi-layer CNN model is trained to score the confidence value of the extracted regions extracted by the I-MSER for text detection. The new text detection algorithm based on I-MSER is evaluated with wide-used ICDAR 2011 and 2013 datasets and shows improved detection performance compared to the existing algorithms.
机译:候选文本区域提取在自然图像中基于卷积神经网络(CNN)的文本检测中起着关键作用。在本文中,我们提出了一种基于CNN的场景文本检测算法,具有新的文本区域提取器。所谓的候选文本区域提取器I-MSER基于最大稳定的极值区域(MSER),其可以提高提取的候选文本区域的独立性和完整性。 I-MSER的设计是由文本MSERS具有高相似性并且彼此靠近的观察的启用。通过根据MSER树从MSER之间的空间重叠关系中选择的MSER树中最多代表性区域,保证了由I-MSER获得的候选文本区域的独立性。训练多层CNN模型以获得由I-MSER提取的提取区域的置信度值进行文本检测。基于I-MSER的新文本检测算法使用广泛使用的ICDAR 2011和2013数据集进行评估,与现有算法相比,显示了改进的检测性能。

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