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A Straightforward and Efficient Instance-Aware Curved Text Detector

机译:直接和高效的实例感知曲线文本检测器

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摘要

A challenging aspect of scene text detection is to handle curved texts. In order to avoid the tedious manual annotations for training curve text detector, and to overcome the limitation of regression-based text detectors to irregular text, we introduce straightforward and efficient instance-aware curved scene text detector, namely, look more than twice (LOMT), which makes the regression-based text detection results gradually change from loosely bounded box to compact polygon. LOMT mainly composes of curve text shape approximation module and component merging network. The shape approximation module uses a particle swarm optimization-based text shape approximation method (called PSO-TSA) to fine-tune the quadrilateral text detection results to fit the curved text. The component merging network merges incomplete text sub-parts of text instances into more complete polygon through instance awareness, called ICMN. Experiments on five text datasets demonstrate that our method not only achieves excellent performance but also has relatively high speed. Ablation experiments show that PSO-TSA can solve the text’s shape optimization problem efficiently, and ICMN has a satisfactory merger effect.
机译:场景文本检测的一个具有挑战性的方面是处理弯曲文本。为了避免繁琐的手动注释进行训练曲线文本检测器,并克服基于回归的文本探测器的限制对不规则文本,我们引入了直接和高效的实例感知曲目场景文本检测器,即看起来超过两次(Lomt ),这使得基于回归的文本检测结果从松散有界框逐渐变为紧凑的多边形。 LOMT主要由曲线文本形状近似模块和组件合并网络组成。形状近似模块使用基于粒子群优化的文本近似方法(称为PSO-TSA)来微调四边形文本检测结果以适合曲线。通过实例意识,组件合并网络将文本实例的文本实例的不完整文本子部分融合到更完整的多边形中,称为ICMN。五个文本数据集的实验表明,我们的方法不仅可以实现出色的性能,而且还具有相对高的速度。消融实验表明,PSO-TSA可以有效地解决文本的形状优化问题,并且ICMN具有令人满意的合并效果。

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