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Intelligent multiple Vehicule Detection and Tracking Using Deep-learning and Machine Learning: An Overview

机译:使用深度学习和机器学习智能多重车辆检测和跟踪:概述

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Autonomous vehicles are in full development and vehicles classification is a fundamental part of this new technology in this years. The AVs is very is important solution in smart cities. The electric vehicle EV is one of the solutions recommended by the vehicle manufacturers and research organizations to reduce noise pollution, fuel consumption, real time and time execution for tasks in networking EV. The transport and mobility sector has for more than a decade seen a fundamental change in its organization due to a double technological revolution and use a new forms of mobility. This motion has profound consequences on the relationship that citizens maintain with mobility. It also proposes a physical platform able to perform a form of platooning using Artificial Intelligence (AI) with scheduler to create platoons with miniature vehicle. Platform called Autonomous Learning Intelligent Vehicles is the association of multiple physical cars coupled with an infrastructure, which handles the data of every single car and makes decisions based on the augmented environmental. In this solution, we present tracking and detection of EVs in parking or in station. So, we change communications EVs, giving priority to charging demands over other types of sms lower priority messages. Finally, we propose an efficient admission control mechanism to manage EVs traffic and to provide quality of Service to charging demand messages in terms of strict delay to avoid both a long latency of EV users and a network overload in high offered load conditions.
机译:自动车辆处于全面开发,车辆分类是这一新技术的基本部分。 AVS非常重要的智能城市解决方案。电动车EV是车辆制造商和研究组织建议的解决方案之一,以降低网络EV中任务的噪音污染,燃油消耗,实时和时间执行。由于双重技术革命,运输和流动部门在其组织中获得了一个基本变化,并使用新的移动形式的移动性。这项议案对公民与流动性保持的关系产生了深刻的影响。它还提出了一种能够使用人工智能(AI)的物理平台,使用调度器来创建具有微型车辆的镀隙。称为自主学习智能车辆的平台是多个物理车与基础设施相结合的关联,其处理每辆车的数据,并根据增强的环境做出决定。在该解决方案中,我们在停车场或车站中呈现电梯的跟踪和检测。因此,我们改变通信EVS,优先考虑对其他类型的SMS较低的优先级消息的需求。最后,我们提出了一个有效的录取控制机制来管理EVS流量,并在严格延迟方面为充电需求提供服务质量,以避免EV用户的长期延迟和高价负载条件中的网络过载。

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