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Multi-Task Learning Based Traditional Mongolian Words Recognition

机译:基于多任务学习的传统蒙古词识别

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In this paper, a multi-task learning framework has been proposed for solving and improving traditional Mongolian words recognition. To be specific, a sequence-to-sequence model with attention mechanism was utilized to accomplish the task of recognition. Therein, the attention mechanism is designed to fulfill the task of glyph segmentation during the process of recognition. Although the glyph segmentation is an implicit operation, the information of glyph segmentation can be integrated into the process of recognition. After that, the two tasks can be accomplished simultaneously under the framework of multi-task learning. By this way, adjacent image frames can be decoded into a glyph more precisely, which results in improving not only the performance of words recognition but also the accuracy of character segmentation. Experimental results demonstrate that the proposed multi-task learning based scheme outperforms the conventional glyph segmentation-based method and various segmentation-free (i.e. holistic recognition) methods.
机译:在本文中,已经提出了一个多任务学习框架来解决和改善传统的蒙古语识别。具体地,利用具有注意机制的序列到序列模型来实现识别的任务。其中,注意机制旨在在识别过程中满足格格尔分割的任务。尽管字形分割是一种隐含操作,但是可以将字体分割的信息集成到识别过程中。之后,可以在多任务学习的框架下同时完成两个任务。通过这种方式,可以更精确地将相邻的图像帧解码为字形,这导致不仅改善了单词识别的性能,而且导致字符分割的准确性。实验结果表明,所提出的基于多任务学习的方案优于传统的基于格术分割的方法和不同分段的(即整体识别)方法。

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