基于注意的自然场景文本识别编码器-解码器方法的比较研究

Fu'ze Cong, Wenping Hu, Qiang Huo, Li Guo
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引用次数: 11

摘要

基于注意力的编码器-解码器方法在场景文本识别中显示出良好的效果。在文献中,已经提出了具有不同编码器、解码器和注意机制的模型,并对孤立的单词识别任务进行了比较,其中模型在合成单词图像或一小部分真实图像上进行了训练。在本文中,我们研究了基于注意力的框架的不同组成部分,并将其与基于CNN-DBLSTM-CTC的方法在大规模真实场景文本句子识别任务中的性能进行了比较。我们通过使用超过160万真实世界的文本行来训练角色模型,并比较它们在从各种真实世界场景收集的测试集上的表现。研究结果表明:(1)对二维特征映射的关注比一维特征映射的关注效果更好,基于RNN的解码器比基于CNN的解码器效果更好;(2)在孤立词识别任务上,基于注意力的方法比基于CNN-DBLSTM-CTC的方法具有更高的识别准确率,但在句子识别任务上表现较差;(3)基于CNN-DBLSTM-CTC的方法利用显式语言模型提高识别精度更为有效和高效。
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A Comparative Study of Attention-Based Encoder-Decoder Approaches to Natural Scene Text Recognition
Attention-based encoder-decoder approaches have shown promising results in scene text recognition. In the literature, models with different encoders, decoders and attention mechanisms have been proposed and compared on isolated word recognition tasks, where the models are trained on either synthetic word images or a small set of real-world images. In this paper, we investigate different components of the attention based framework and compare its performance with a CNN-DBLSTM-CTC based approach on large-scale real-world scene text sentence recognition tasks. We train character models by using more than 1.6M real-world text lines and compare their performance on test sets collected from a variety of real-world scenarios. Our results show that (1) attention on a two-dimensional feature map can yield better performance than one-dimensional one and an RNN based decoder performs better than CNN based one; (2) attention-based approaches can achieve higher recognition accuracy than CNN-DBLSTM-CTC based approaches on isolated word recognition tasks, but perform worse on sentence recognition tasks; (3) it is more effective and efficient for CNN-DBLSTM-CTC based approaches to leverage an explicit language model to boost recognition accuracy.
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