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Instance Segmentation Network With Self-Distillation for Scene Text Detection

机译:实例分割网络,具有自蒸馏场景文本检测

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摘要

Segmentation based methods have become the mainstream for detecting scene text with arbitrary orientations and shapes. In order to address challenging problems such as separating the text instances that are very close to each other, however, these methods often require time-consuming post-processing. In this paper, we propose an instance segmentation network (ISNet), which simultaneously generates prototype masks and per-instance mask coefficients. After linearly combining the two components, ISNet can implement fast text location. Furthermore, we apply self-distillation to train the ISNet and refine its detection accuracy. We have evaluated the proposed method on four popular benchmarks, i.e., ICDAR2015, ICDAR2017 MLT, CTW1500 and Total-Text, and the experimental results show that it can achieve better tradeoff between accuracy and efficiency for scene text detection.
机译:基于分段的方法已成为检测具有任意取向和形状的场景文本的主流。为了解决具有挑战性的问题,例如分离彼此非常接近的文本实例,这些方法通常需要耗时的后处理。在本文中,我们提出了一个实例分段网络(ISNet),其同时生成原型掩码和每个实例掩码系数。在线性结合两个组件后,ISNET可以实现快速文本位置。此外,我们应用自蒸馏以培训ISNET并优化其检测精度。我们在四个流行的基准中评估了所提出的方法,即ICDAR2015,ICDAR2015,CTW1500和全文,实验结果表明它可以在场景文本检测的准确性和效率之间实现更好的权衡。

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