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A Hybrid Approach to Detect Texts in Natural Scenes by Integration of a Connected-Component Method and a Sliding-Window Method

机译:一种混合方法来通过集成连接组件方法和滑动窗口方法来检测自然场景中的文本

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Text detection in images of natural scenes is important for scene understanding, content-based image analysis, assistive navigation and automatic geocoding. Achieving such text detection is challenging due to complex backgrounds, non-uniform illumination, and variations in text font, size, and orientation. In this paper, we present a novel hybrid approach for detecting text robustly in natural scenes. We connect two text-detection methods in parallel structure: (1) a connected-component method and (2) a sliding-window method and outputs basically both results. The connected-component method generates text lines based on local relations of connected components. The sliding-window method consisting of a novel Hough Transform-based method generates text lines based on global structure. These two text-detection methods can output complementary results, which enables the system to detect various texts in natural scenes. Testing with the ICDAR2013 text localization dataset shows that the proposed scheme outperforms the latest published algorithms and the parallel structure consisting of the two different methods contributes to decreasing false negatives and improves recall rate.
机译:自然场景图像中的文本检测对于场景理解,基于内容的图像分析,辅助导航和自动地理编码很重要。由于复杂的背景,不均匀的照明和文本字体,大小和方向的变化,实现这些文本检测是挑战。在本文中,我们提出了一种新的混合方法,用于在自然场景中鲁莽地检测文本。我们在并联结构中连接两个文本检测方法:(1)连接组件方法和(2)滑动窗口方法和输出基本上都是结果。连接组件方法基于连接组件的本地关系生成文本线。由新型霍夫转换的方法组成的滑动窗口方法基于全局结构生成文本线。这两个文本检测方法可以输出互补结果,使系统能够检测自然场景中的各种文本。使用ICDAR2013文本定位数据集显示该方案优于最新发布的算法和由两种不同方法组成的并行结构有助于降低假否定并提高召回率。

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