Faster Segmentation-Free Handwritten Chinese Text Recognition with Character Decompositions

Théodore Bluche, Ronaldo O. Messina
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引用次数: 9

Abstract

Recently, segmentation-free methods for handwritten Chinese text were proposed. They do not require character-level annotations to be trained, and avoid character segmentation errors at decoding time. However, segmentation-free methods need to make at least as many predictions as there are characters in the image, and often a lot more. Combined with the fact that there are many characters in Chinese, these systems are too slow to be suited for industrial applications. Inspired by the input methods for typing Chinese characters, we propose a sub-character-level recognition that achieves a 4x speedup over the baseline Multi-Dimensional Long Short-Term Memory Recurrent Neural Network (MDLSTM-RNN).
基于字符分解的快速无分割手写中文文本识别
近年来,人们提出了手写体中文文本的无分词处理方法。它们不需要训练字符级注释,并且在解码时避免了字符分割错误。然而,无分割方法需要做出至少和图像中字符一样多的预测,通常还要多得多。再加上中文字符繁多,这些系统速度太慢,不适合工业应用。受汉字输入法的启发,我们提出了一种子字符级识别方法,该方法比基线多维长短期记忆递归神经网络(MDLSTM-RNN)实现了4倍的加速。
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