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Template-Instance Loss for Offline Handwritten Chinese Character Recognition

机译:脱机手写汉字识别模板 - 实例丢失

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The long-standing challenges for offline handwritten Chinese character recognition (HCCR) are twofold: Chinese characters can be very diverse and complicated while similarly looking, and cursive handwriting (due to increased writing speed and infrequent pen lifting) makes strokes and even characters connected together in a flowing manner. In this paper, we propose the template and instance loss functions for the relevant machine learning tasks in offline handwritten Chinese character recognition. First, the character template is designed to deal with the intrinsic similarities among Chinese characters. Second, the instance loss can reduce category variance according to classification difficulty, giving a large penalty to the outlier instance of handwritten Chinese character. Trained with the new loss functions using our deep network architecture HCCR14Layer model consisting of simple layers, our extensive experiments show that it yields state-of-the-art performance and beyond for offline HCCR.
机译:离线手写汉字识别(HCCR)的长期挑战是双重的:汉字可以非常多样化,同时看起来很复杂,并且卷法手写(由于写入速度增加,少量笔升降)使得中风甚至是字符连接在一起以流动的方式。在本文中,我们提出了在离线手写中文字符识别中的相关机器学习任务的模板和实例丢失函数。首先,字符模板旨在处理汉字之间的内在相似之处。其次,实例丢失可以根据分类难度减少类别方差,给手写汉字的异常值进行了大的惩罚。使用我们的深网络架构HCCR14Layer模型进行了新的损失函数,这些损失函数由简单的图层组成,我们的广泛实验表明它产生了最先进的性能及以外的离线HCCR。

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