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In-air handwritten Chinese text recognition with temporal convolutional recurrent network

机译:与时间卷积经常性网络的空中手写的中国文本识别

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As a new human-computer interaction way, in-air handwriting allows users to perform gesture-based writing in the midair. However, most existing in-air handwriting systems mainly focus on recognizing either isolated characters/words or only a small number of texts, making those systems far from practical applications. Instead, here we present a 3D in-air handwritten Chinese text recognition (IAHCTR) system for the first time, and construct the first public large-scale IAHCT dataset. Moreover, a novel architecture, named the temporal convolutional recurrent network (TCRN), is proposed for online HCTR. Specifically, the TCRN first applies the 1-dimensional convolution to extract local contextual features from low-level trajectories, and then it utilizes the recurrent network to capture long-term dependencies of high-level outputs. Compared with the state-of-the-art architecture, the TCRN not only avoids the domain-specific knowledge for feature image extraction, but also attains higher training efficiency with a more compact model. Empirically, this TCRN also outperforms the single recurrent network with faster prediction and higher accuracy. Experiments on CASIA-OLHWDB2 & ICDAR-2013 demonstrate that the TCRN yields the best result in comparison to the state-of-the-art methods for online HCTR. (C) 2019 Elsevier Ltd. All rights reserved.
机译:作为一种新的人机互动方式,空中手写允许用户在中位于中位于基于手势的写作。然而,大多数现有的空中手写系统主要专注于识别隔离的字符/单词或仅少量文本,使得这些系统远离实际应用。相反,在这里我们首次介绍3D空中手写中文文本识别(IAHCTR)系统,并构建第一个公共大规模IAHCT数据集。此外,为在线HCTR提出了一种名为时间卷积复制网络(TCRN)的新颖架构。具体地,TCRN首先应用1维卷积,以从低级轨迹中提取本地上下文特征,然后它利用经常性网络捕获高级输出的长期依赖性。与最先进的架构相比,TCRN不仅避免了特定于特征图像提取的域特定知识,而且还通过更紧凑的模型来实现更高的训练效率。经验上,该TCRN还以更快的预测和更高的准确度优于单个经常性网络。 Casia-OLHWDB2和ICDAR-2013上的实验表明,与在线HCTR的最先进方法相比,TCRN产生了最佳结果。 (c)2019年elestvier有限公司保留所有权利。

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