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Multi-Directional Scene Text Detection Based on Improved YOLOv3

机译:基于改进YOLOV3的多向场景文本检测

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摘要

To address the problem of low detection rate caused by the close alignment and multi-directional position of text words in practical application and the need to improve the detection speed of the algorithm, this paper proposes a multi-directional text detection algorithm based on improved YOLOv3, and applies it to natural text detection. To detect text in multiple directions, this paper introduces a method of box definition based on sliding vertices. Then, a new rotating box loss function MD-Closs based on CIOU is proposed to improve the detection accuracy. In addition, a step-by-step NMS method is used to further reduce the amount of calculation. Experimental results show that on the ICDAR 2015 data set, the accuracy rate is 86.2%, the recall rate is 81.9%, and the timeliness is 21.3 fps, which shows that the proposed algorithm has a good detection effect on text detection in natural scenes.
机译:为了解决在实际应用中文本单词的近距离对准和多向位置引起的低检测率的问题,并且需要提高算法的检测速度,提出了一种基于改进的YOLOV3的多向文本检测算法,并将其应用于自然文本检测。要在多个方向上检测到文本,本文介绍了一种基于滑顶的框定义方法。然后,提出了一种基于CIOU的新的旋转箱损耗函数MD-CLOCS,以提高检测精度。另外,逐步的NMS方法用于进一步减少计算量。实验结果表明,在ICDAR 2015数据集上,准确率为86.2%,召回率为81.9%,及时性为21.3 FPS,这表明该算法对自然场景中的文本检测具有良好的检测效果。

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