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An Edge Based Smart Parking Solution Using Camera Networks and Deep Learning

机译:使用摄像头网络和深度学习的基于边缘的智能停车解决方案

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The smart parking industry continues to evolve as an increasing number of cities struggle with traffic congestion and inadequate parking availability. For urban dwellers, few things are more irritating than anxiously searching for a parking space. Research results show that as much as 30% of traffic is caused by drivers driving around looking for parking spaces in congested city areas. There has been considerable activity among researchers to develop smart technologies that can help drivers find a parking spot with greater ease, not only reducing traffic congestion but also the subsequent air pollution. Many existing solutions deploy sensors in every parking spot to address the automatic parking spot detection problems. However, the device and deployment costs are very high, especially for some large and old parking structures. A wide variety of other technological innovations are beginning to enable more adaptable systems-including license plate number detection, smart parking meter, and vision-based parking spot detection. In this paper, we propose to design a more adaptable and affordable smart parking system via distributed cameras, edge computing, data analytics, and advanced deep learning algorithms. Specifically, we deploy cameras with zoom-lens and motorized head to capture license plate numbers by tracking the vehicles when they enter or leave the parking lot; cameras with wide angle fish-eye lens will monitor the large parking lot via our custom designed deep neural network. We further optimize the algorithm and enable the real-time deep learning inference in an edge device. Through the intelligent algorithm, we can significantly reduce the cost of existing systems, while achieving a more adaptable solution. For example, our system can automatically detect when a car enters the parking space, the location of the parking spot, and precisely charge the parking fee and associate this with the license plate number.
机译:随着越来越多的城市因交通拥堵和停车位不足而苦苦挣扎,智能停车行业继续发展。对于城市居民而言,除了急于寻找停车位之外,没有什么比这更令人烦恼了。研究结果表明,多达30%的交通是由驾驶员在拥挤的城市地区四处寻找停车位引起的。研究人员之间进行了大量的活动来开发智能技术,这些技术可以帮助驾驶员更轻松地找到停车位,不仅可以减少交通拥堵,还可以减少随后的空气污染。许多现有的解决方案都在每个停车位中部署传感器,以解决自动停车位检测问题。但是,设备和部署成本非常高,尤其是对于某些大型和老式的停车结构而言。各种各样的其他技术创新也开始使系统更具适应性,包括车牌号检测,智能停车收费表和基于视觉的停车位检测。在本文中,我们建议通过分布式摄像头,边缘计算,数据分析和高级深度学习算法来设计一种更具适应性和价格可承受的智能停车系统。具体来说,我们部署了具有变焦镜头和电动头的摄像机,通过跟踪车辆进出停车场时的车牌号来捕获车牌号;带广角鱼眼镜头的摄像机将通过我们定制设计的深度神经网络监控大型停车场。我们进一步优化算法,并在边缘设备中启用实时深度学习推理。通过智能算法,我们可以显着降低现有系统的成本,同时实现更具适应性的解决方案。例如,我们的系统可以自动检测汽车何时进入停车位,停车位的位置,并精确收取停车费并将其与车牌号关联。

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