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Towards End-to-End Scene Text Spotting by Sharing Convolutional Feature Map

机译:通过共享卷积特征图实现端到端场景文本点

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In this paper, we propose a new algorithm that conjointly address scene text detection and recognition by sharing convolutional feature map. Compared with most systems which consider text detection and recognition to be irrelevant tasks, we integrate text detection and recognition into an end-to-end trainable neural network based on convolutional and recurrent neural network It can precisely detect and recognize text during a simple forward propagation, avoiding redundant processes like image patch cropping, repeated calculation of feature map. We train this unified neural network just by images and corresponding ground truth bounding boxes and text labels. Our algorithm gains outstanding performance in terms of computation time and accuracy on standard benchmark datasets. The proposed model runs robustly on multi-ratios images without complicated post-processing steps.
机译:在本文中,我们提出了一种通过共享卷积特征图联合解决场景文本检测和识别的新算法。与大多数将文本检测和识别视为无关任务的系统相比,我们将文本检测和识别集成到基于卷积和递归神经网络的端到端可训练神经网络中。它可以在简单的正向传播过程中精确地检测和识别文本,避免了多余的过程,例如图像块裁剪,重复计算特征图。我们仅通过图像以及相应的地面真值边界框和文本标签来训练该统一的神经网络。在标准基准数据集的计算时间和准确性方面,我们的算法获得了出色的性能。所提出的模型可在多比例图像上稳健运行,而无需复杂的后处理步骤。

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