End-PolarT:端到端场景文本检测的极性表示

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Yirui Wu , Qiran Kong , Cheng Qian , Michele Nappi , Shaohua Wan
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引用次数: 0

摘要

深度学习在文本检测方面取得了巨大成功,最近的方法借鉴了分割的灵感来检测场景文本。然而,大多数基于分割的方法在像素级分类和后细化方面具有较高的计算成本。此外,它们还面临着任意方向、弯曲文本、照明等挑战。为了提高检测精度和计算成本,我们提出了一种端到端、单阶段的方法,称为end PolarT网络,通过在极坐标中生成轮廓点来进行文本检测。End PolarT不仅回归了轮廓点的位置而不是像素的位置以降低高昂的计算成本,而且通过中心和轮廓来适应文本实例的内在特征,以抑制边界像素的错误标记。为了处理极性表示,我们进一步提出极性IoU和中心性作为损失函数的关键部分,以生成有效的文本检测范式。与现有方法相比,End PolarT通过在多个公共数据集上进行测试,取得了优异的结果,从而在复杂场景中保持了效率和有效性的平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
End-PolarT: Polar Representation for End-to-End Scene Text Detection

Deep learning has achieved great success in text detection, where recent methods adopt inspirations from segmentation to detect scene texts. However, most segmentation based methods have high computation cost in pixel-level classification and post refinements. Moreover, they still faces challenges like arbitrary directions, curved texts, illumination and so on. Aim to improve detection accuracy and computation cost, we propose an end-to-end and single-stage method named as End-PolarT network by generating contour points in polar coordinates for text detection. End-PolarT not only regress locations of contour points instead of pixels to relieve high computation cost, but also fits with intrinsic characteristics of text instances by centers and contours to suppress mislabeling boundary pixels. To cope with polar representation, we further propose polar IoU and centerness as key parts of loss functions to generate effective paradigms for text detection. Compared with the existing methods, End-PolarT achieves superior results by testing on several public datasets, thus keeping balance between efficiency and effectiveness in complicated scenes.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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