Uvais Karni, S. S. Ramachandran, Kalpathy Sivaraman, A. K. Veeraraghavan
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引用次数: 6
摘要
在当今世界,发生的事故数量急剧增加,导致致命死亡人数增加。这主要是由于司机遇到的干扰造成的。比如,边开车边发短信,司机注意力不集中等等。由于上述原因,自动驾驶汽车将是一个更好的选择,它可以消除驾驶员的错误。本文提出的概念是以通用的RC车为基础,制造一辆自动驾驶的微缩模型车。我们的目标是通过使用图像处理来实现上述目标,图像处理通过使用神经网络来训练,从而创建一个模型,通过该模型实现自动驾驶汽车。本课题所使用的硬件组件有Ras berry PI 3b微型计算机、摄像模块、HCSR04超声波传感器。我们在我们的模型中实现了以下特征,(a)车道检测,(b)交通信号识别,(c)道路标志识别,(d)障碍物检测避免,(e)行人检测。
Development Of Autonomous Downscaled Model Car Using Neural Networks And Machine Learning
In this contemporary world, the number of accidents occurring has increased drastically which leads to an increase in the number of fatal deaths. This is mostly caused by the distractions that driver encounters. For example, texting and driving,less attention span of driver,etc. Due to the above reasons, autonomous cars would be a better option which takes the errors of a driver away from the equation. The proposed concept in the paper is to make an autonomous downscaled model car using a generic RC car as base. We aim to achieve the above by using image processing which is trained by using neural networks to create a model through which autonomous cars are achieved. The hardware components used in this project are Ras pberry PI 3 B microcomputer , camera module, HCSR04 ultrasonic sensor. We achieve the following features in our model, (a)Lane detection, (b)Traffic signal identification, (c)Road signs identification, (d)Obstacle detection avoidance, (e)Pedestrian Detection.