Scene text recognition is a hot research topic in computer vision. Recently, many recognition methods based on the encoder-decoder framework have been proposed, and they can handle scene texts of perspective distortion and curve shape. Nevertheless, they still face lots of challenges like image blur, uneven illumination, and incomplete characters. We argue that most encoder-decoder methods are based on local visual features without explicit global semantic information. In this work, we propose a semantics enhanced encoder-decoder framework to robustly recognize low-quality scene texts. The semantic information is used both in the encoder module for supervision and in the decoder module for initializing. In particular, the state-of-the art ASTER method is integrated into the proposed framework as an exemplar. Extensive experiments demonstrate that the proposed framework is more robust for low-quality text images, and achieves state-of-the-art results on several benchmark datasets.
翻译:最近,基于编码器-编码器框架的许多识别方法已经提出,它们可以处理视觉扭曲和曲线形状的现场文本。然而,它们仍然面临着许多挑战,如图像模糊、光化不均和字符不完整。我们争辩说,大多数编码器-编码器方法都是基于本地视觉特征,而没有明确的全球语义信息。在这项工作中,我们提出了一个语义强化编码器-编码器框架,以强有力地识别低质量的现场文本。语义信息既用于用于用于监管编码器模块,也用于初始化的解码器模块。特别是,将艺术状态ASTER方法作为特例纳入拟议框架。广泛的实验表明,拟议的框架对于低质量的文本图像来说更为可靠,并在几个基准数据集上取得了最新技术成果。