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Finite State Machine Based Decoding of Handwritten Text Using Recurrent Neural Networks

机译:基于递归神经网络的基于有限状态机的手写文本解码

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This paper presents a Finite State Machine (FSM) to reduce user's waiting time to get the recognition result after finishing writing in recognition of online handwritten English text. The lexicon is modeled by a FSM, and then determination and minimization are applied to reduce the number of states. The reduction of states in the FSM shortens the waiting time without degrading the recognition accuracy. Moreover, by merging incoming paths to each state, the recognition rate is improved. The N-best states decoding method also reduces the waiting time significantly with small degradation in recognition accuracy. Experiments on IAM-OnDB and IBM_UB_1 show the effectiveness of the method in both reducing waiting and improving recognition accuracy.
机译:本文提出了一种有限状态机(FSM),以减少用户完成在线手写英文文本识别后的识别结果的等待时间。通过FSM对词典进行建模,然后应用确定和最小化来减少状态数。 FSM中状态的减少会缩短等待时间,而不会降低识别精度。此外,通过合并进入每个状态的进入路径,可以提高识别率。 N个最佳状态解码方法还显着减少了等待时间,并且识别精度的下降很小。在IAM-OnDB和IBM_UB_1上进行的实验表明,该方法在减少等待时间和提高识别精度方面均有效。

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