基于图像的基于深度学习和更快R-CNN的停车占用检测

Zoja Šćekić, Stevan Cakic, Tomo Popović, Anja Jakovljević
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引用次数: 4

摘要

智慧城市是物联网和人工智能应用日益广泛的一个领域。智慧城市的概念依赖于提高生活质量,解决重要问题,如全球变暖、公共卫生、能源和资源。智能停车管理是智慧城市用例之一。本文描述了使用深度学习算法来处理停车场图像并确定其当前占用率。使用PKLot数据集和12417张图像,Detectron2软件库和Faster R-CNN算法开发预测模型。由此产生的模型可以集成到停车位传感器中,用于构建智能停车解决方案,从而更有效地利用城市地区的空间,减少交通拥堵,并将停车浏览减少到最低限度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image-Based Parking Occupancy Detection Using Deep Learning and Faster R-CNN
Smart city is one area with the growing use of Internet of Things and Artificial Intelligence. The concept of smart cities relies on making quality of life better, and solving important problems, such as global warming, public health, energy and resources. Smart parking management is one of the smart city use cases. This paper describes the use of deep learning algorithms to process images of parking lots and determine their current occupancy. The development of prediction models was done using PKLot dataset with 12417 images, Detectron2 software library, and Faster R-CNN algorithm. The resulting models can be integrated into parking space sensors and used for building smart parking solutions, and thus lead to more efficient use of space in urban areas, reduced traffic congestion, as well as reducing parking surfing to minimum.
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