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Existing object detection-based text detectors mainly concentrate on detecting horizontal and multioriented text. However, they do not pay enough attention to complex-shape text (curved or other irregularly shaped text). Recently, segmentation-based text detection methods have been introduced to deal with the complex-shape text; however, the pixel level processing increases the computational cost significantly. To further improve the accuracy and efficiency, we propose a novel detection framework for arbitrary-shape text detection, termed as RayNet. RayNet uses Center Point Set (CPS) and Ray Distance (RD) to fit text, where CPS is used to determine the text general position and the RD is combined with CPS to compute Ray Points (RP) to localize the text accurate shape. Since RP are disordered, we develop the Ray Points Connection (RPC) algorithm to reorder RP, which significantly improves the detection performance of complex-shape text. RayNet achieves impressive performance on existing curved text dataset (CTW1500) and quadrangle text dataset (ICDAR2015), which demonstrate its superiority against several state-of-the-art methods.
Numerous scene text detection methods have been proposed in recent years. Most of them declare they have achieved state-of-the-art performances. However, the performance comparison is unfair, due to lots of inconsistent settings (e.g., training data,
Recently, segmentation-based methods are quite popular in scene text detection, as the segmentation results can more accurately describe scene text of various shapes such as curve text. However, the post-processing of binarization is essential for se
Segmentation-based scene text detection methods have been widely adopted for arbitrary-shaped text detection recently, since they make accurate pixel-level predictions on curved text instances and can facilitate real-time inference without time-consu
The latest trend in the bottom-up perspective for arbitrary-shape scene text detection is to reason the links between text segments using Graph Convolutional Network (GCN). Notwithstanding, the performance of the best performing bottom-up method is s
Arbitrary shape text detection is a challenging task due to the high complexity and variety of scene texts. In this work, we propose a novel adaptive boundary proposal network for arbitrary shape text detection, which can learn to directly produce ac