实时汽车检测和驾驶安全报警系统与谷歌Tensorflow对象检测API

C. Hsieh, Dung-Ching Lin, Chengjia Wang, Zong-Ting Chen, Jiun-Jian Liaw
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引用次数: 6

摘要

交通事故是一个严重的社会问题,经常造成生命损失和经济损失。大多数车祸是由于车与车之间缺乏安全距离造成的。为了解决这一问题,本文提出了一种实时车辆检测与安全报警系统。本系统由两个模块组成:实时车辆检测模块和安全报警模块。该系统预计将适用于正常的高速公路驾驶场景。在汽车检测模块中,使用了Google Tensorflow Object detection (GTOD) API。GTOD API的功能是实时检测前方车辆,并用矩形框对其进行标记。安全报警模块分为三个阶段:计算被检测车辆的箱体宽度;计算安全系数;以确定驾驶状态。为了验证所提出的系统,进行了真实的高速公路实验。结果表明,所提出的系统能够适当地指示驾驶状态:安全、危险和警告。实验结果表明,该系统在实际应用中是可行的。
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Real-Time Car Detection and Driving Safety Alarm System With Google Tensorflow Object Detection API
Car accident is a serious social problem which often results in both life loss and financial loss. Most of car accidents are caused by a lack of safe distance between cars. To relieve this problem, in this paper we propose a real-time car detection and safety alarm system. The proposed system consists of two modules: real-time car detection module and safety alarm module. The proposed system is supposed to apply in a normal highway driving scenario. In the car detection module, the Google Tensorflow Object Detection (GTOD) API is employed. The function of GTOD API is to detect frontal cars in real-time and then mark them with rectangular boxes. As for the safety alarm module, it consists of three phases: to calculate the box width of detected cars; to calculate the safety factor; to determine the driving state. To justify the proposed system, a real highway experiment is conducted. The results show that the proposed system is able to appropriately indicate driving states: safe, dangerous and warning. By the given experimental results, it implies that the proposed system is feasible and applicable in the real-world applications.
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