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Multi-dimensional Connectionist Classification: Reading Text in One Step

机译:多维连接主义者分类:一步一步阅读文本

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Offline handwriting recognition systems often use LSTM networks, trained with line- or word-images. Multi-line text makes it necessary to use segmentation to explicitly obtain these images. Skewed, curved, overlapping, incorrectly written text, or noise can lead to errors during segmentation of multi-line text and reduces the overall recognition capacity of the system. Last year has seen the introduction of deep learning methods capable of segmentation-free recognition of whole paragraphs. Our method uses Conditional Random Fields to represent text and align it with the network output to calculate a loss function for training. Experiments are promising and show that the technique is capable of training a LSTM multi-line text recognition system.
机译:离线手写识别系统通常使用经过线图像或文字图像训练的LSTM网络。多行文本使得必须使用分段来显式获取这些图像。歪斜,弯曲,重叠,书写不正确的文字或噪声会导致在多行文字分割期间出现错误,并降低系统的整体识别能力。去年,已经出现了能够对整个段落进行无分段识别的深度学习方法。我们的方法使用条件随机场来表示文本,并将其与网络输出对齐以计算损失函数以进行训练。实验是有希望的,并表明该技术能够训练LSTM多行文本识别系统。

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