交通标志检测与识别

Anju C P, Andria Joy, H. Ashok, J. Pious, Livya George
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引用次数: 0

摘要

由于交通标志板的设置没有遵循任何国际标准,非本地居民可能难以轻松识别和推断标志。因此,本项目主要侧重于展示一个可以帮助解决这种不便的系统。这可以通过将交通标志翻译成用户首选语言的语音注释来实现。因此,整个过程包括检测交通标志,在可用数据集的帮助下检测文本数据,然后将其处理成音频,以他/她的首选语言输出给用户。提出的系统不仅解决了上述问题,而且通过正确传达交通标志,减少事故,在一定程度上确保了更安全的驾驶。用于实现该系统的技术包括数字图像处理、自然语言处理和机器学习概念。该系统的实现包括三个主要步骤:从采集的交通场景中检测交通标志,对交通标志进行分类,最后将分类后的交通标志转换为音频信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic Sign Detection and Recognition
As placement of traffic sign board do not follow any international standard, it may be difficultfor non-local residents to recognize and infer the signs easily. So, this project mainly focuses ondemonstrating a system that can help facilitate this inconvenience. This can be achieved byinterpreting the traffic sign as a voice note in the user’s preferred language. Therefore, the wholeprocess involves detecting the traffic sign, detecting textual data if any with the help of availabledatasets and then processing it into an audio as the output to the user in his/her preferred language.The proposed system not only tackles the above-mentioned problem, but also to an extent ensuressafer driving by reducing accidents through conveying the traffic signs properly. The techniques usedto implement the system include digital image processing, natural language processing and machinelearning concepts. The implementation of the system includesthree major steps which are detection of traffic sign from a captured traffic scene, classification of traffic signs and finally conversion of classified traffic signs to audio message.
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