An Edge-AI Heterogeneous Solution for Real-time Parking Occupancy Detection

T. N. Thinh, Long Tan Le, Nguyen Hoang Long, Ho Le Thuc Quyen, Ngo Qui Thu, Nguyen La Thong, Huynh Phuc Nghi
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引用次数: 1

Abstract

In the digital era, building smart cities is a highly desired goal that every country strives to achieve. With the advancement of technology, many smart city systems have been developed at a rapid rate of which Smart Parking is emerging as one of the core components. Smart Parking promises to automate the parking process, thereby saving time, resources and effort for searching an optimal parking space as well as reducing traffic congestion and population. As one of the newly emerging and disrupting technology, Artificial Intelligence, Machine Learning and Deep Learning (AI/ML/DL) are being utilized in many aspects of developing a Smart Parking system. In this paper, we propose an solution for accelerating AI/ML/DL algorithms deployed on low-cost System-on-Chip platforms (SoCs), which are often used as edge devices in Smart Parking system. In particular, we leverage Binary Neural Network (BNN), one of the most advanced deep learning models, to build a heterogeneous algorithm for real-time identifying parking occupancy based on the integration of SoCs and existing surveillance systems. The proposed solution is implemented and evaluated in Zynq UltraScale+ MPSoC with high accuracy (approx. 87%), low latency (avg. 16ms) and high frame per second (FPS) rate.
基于边缘人工智能的停车场占用率实时检测异构解决方案
在数字时代,建设智慧城市是每个国家都在努力实现的目标。随着科技的进步,许多智慧城市系统得到了快速发展,其中智慧停车作为核心组成部分之一应运而生。智能停车承诺将停车过程自动化,从而节省寻找最佳停车位的时间、资源和精力,并减少交通拥堵和人口。作为新兴的颠覆性技术之一,人工智能、机器学习和深度学习(AI/ML/DL)在开发智能停车系统的许多方面都得到了应用。在本文中,我们提出了一种加速部署在低成本的片上系统平台(soc)上的AI/ML/DL算法的解决方案,soc通常用作智能停车系统的边缘设备。特别是,我们利用最先进的深度学习模型之一二进制神经网络(BNN),基于soc和现有监控系统的集成,构建实时识别停车占用的异构算法。提出的解决方案在Zynq UltraScale+ MPSoC中实现和评估,具有高精度(约为1 / 4)。87%),低延迟(平均16ms)和高帧/秒(FPS)速率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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