MSER-based text detection and communication algorithm for autonomous vehicles

A. Mammeri, A. Boukerche, El-Hebri Khiari
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引用次数: 10

Abstract

Text detection and communication in the automotive context has attracted the attention of researchers only over the past few years. Detecting text in the automotive context, as opposed to the detection of text of printed pages, imposes additional challenges, such as the presence of obstacles, blurry frames, speedy vehicles, etc. In this paper, we present an in-vehicle real-time system able to localize texts and communicate them to the drivers. Our system begins by localizing regions of interest as a Maximally Stable Extremal Regions (MSERs). Afterwards, we apply a novel filtering stage which begins by dividing each ROI into 4 × 4 cells, counting the number of edges in each cell and comparing them to a well defined threshold. This is performed in order to filter out a considerable number of unwanted objects. The ROIs that contain text are fed into a recognition module based on the Optical Character Recognizer (OCR). Our proposed method achieves high f-scores when tested against several videos containing a numerous panels.
基于mser的自动驾驶车辆文本检测与通信算法
汽车语境下的文本检测和通信在过去几年才引起研究人员的关注。与检测打印页面的文本相反,在汽车环境中检测文本会带来额外的挑战,例如障碍物的存在、模糊的框架、快速行驶的车辆等。在本文中,我们提出了一个车载实时系统,能够定位文本并将其传递给驾驶员。我们的系统首先将感兴趣的区域定位为最大稳定极值区域(mser)。之后,我们应用了一种新的滤波阶段,该阶段首先将每个ROI划分为4 × 4单元,计算每个单元中的边缘数量,并将它们与定义良好的阈值进行比较。这样做是为了过滤掉大量不需要的对象。包含文本的roi被输入到基于光学字符识别器(OCR)的识别模块中。我们提出的方法在对包含多个面板的多个视频进行测试时获得了很高的f分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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