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N-FTRN: Neighborhoods based fully convolutional network for Chinese text line recognition

机译:N-FTRN:基于邻域的全卷积网络,用于中文文本行识别

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摘要

The convolutional recurrent neural network is one of the most popular text recognition methods. Recurrent structures can extract long-term dependencies, but they are time consuming in computation compared with convolutional structures. We argue that the Chinese text line recognition can be performed based on neighbor rather than entire contextual information, and the information extracted from neighborhoods should only be a supplement to the information extracted from character regions. Therefore, we propose a novel neighborhoods based fully convolutional text recognition network (N-FTRN). It first extracts character-level feature sequences from text lines, then uses residual blocks instead of the recurrent structure to utilize contextual information. A reshape layer is applied to enable the network to recognize both vertical and horizontal text lines. Extensive experiments have been conducted to validate the efficiency and effectiveness of the proposed network. Compared with the state-of-the-art methods, we achieve comparable recognition performances on a Chinese scene text competition dataset (TRW) in ICDAR 2015 with much more compact models.
机译:卷积递归神经网络是最流行的文本识别方法之一。循环结构可以提取长期依赖关系,但是与卷积结构相比,它们在计算上很耗时。我们认为中文文本行识别可以基于邻居而不是整个上下文信息来执行,并且从邻域中提取的信息应仅是对从字符区域中提取的信息的补充。因此,我们提出了一种新颖的基于邻域的全卷积文本识别网络(N-FTRN)。它首先从文本行中提取字符级特征序列,然后使用残差块代替循环结构来利用上下文信息。应用了整形层以使网络能够识别垂直和水平文本行。已经进行了广泛的实验以验证所提出的网络的效率和有效性。与最先进的方法相比,我们在ICDAR 2015上以更紧凑的模型在中国场景文本竞赛数据集(TRW)上实现了可比的识别性能。

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