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Weakly Supervised Attention Rectification for Scene Text Recognition

机译:弱势监督场景文本识别的关注整改

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Scene text recognition has become a hot topic in recent years due to its booming real-life applications. Attention-based encoder-decoder framework has become one of the most popular frameworks especially in the irregular text scenario. However, the “attention drift” problem hinders the recognition performance for most existing attention-based scene text recognition methods. To solve this problem, we propose an auxiliary supervision branch along with the attention-based encoder-decoder framework. A new loss function is designed to refine the feature map and to help the attention region align the target character area. Compared with existing attention rectification mechanisms, our method does not require character-level annotations or introduce any additional trainable parameter. Furthermore, our method can improve the performance for both RNN-Attention and Scaled Dot-Product Attention. The experiment results on various benchmarks have demonstrated that the proposed approach outperforms the state-of-the-art methods in both regular and irregular text recognition scenarios.
机译:由于其蓬勃发展的现实生活应用,近年来,现场文本识别已成为一个热门话题。基于关注的编码器 - 解码器框架已成为最受欢迎的框架之一,尤其是在不规则文本方案中。但是,“注意漂移”问题会阻碍最现有的基于关注的场景文本识别方法的识别性能。为了解决这个问题,我们提出了一种辅助监督分支以及关注的编码器解码器框架。新的损失函数旨在优化特征映射并帮助注意区域对齐目标字符区域。与现有的注意整理机制相比,我们的方法不需要字符级注释或引入任何额外的培训参数。此外,我们的方法可以提高RNN-关注和缩放点产品的性能。各种基准测试的实验结果表明,所提出的方法在常规和不规则的文本识别方案中表现出最先进的方法。

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