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Towards smart traffic management systems: Vacant on-street parking spot detection based on video analytics

机译:迈向智能交通管理系统:基于视频分析的空置路边停车位检测

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Smart Cities rely on the use of ICTs for a more efficient and intelligent use of resources, whilst improving citizens' quality of life and reducing the environmental footprint. As far as the livability of cities is concerned, traffic is one of the most frequent and complex factors directly affecting citizens. Particularly, drivers in search of a vacant parking spot are a non-negligible source of atmospheric and acoustic pollution. Although some cities have installed sensor-based vacant parking spot detectors in some neighbourhoods, the cost of this approach makes it unfeasible at large scale. As an approach to implement a sustainable solution to the vacant parking spot detection problem in urban environments, this work advocates fusing the information from small-scale sensor-based detectors with that obtained from exploiting the widely-deployed video surveillance camera networks. In particular, this paper focuses on how video analytics can be exploited as a prior step towards Smart City solutions based on data fusion. Through a set of experiments carefully planned to replicate a real-world scenario, the vacant parking spot detection success rate of the proposed system is evaluated through a critical comparison of local and global visual features (either alone or fused at feature level) and different classifier systems applied to the task. Furthermore, the system is tested under setup scenarios of different complexities, and experimental results show that while local features are best when training with small amounts of highly accurate on-site data, they are outperformed by their global counterparts when training with more samples from an external vehicle database.
机译:智慧城市依靠ICT来更有效和智能地使用资源,同时改善市民的生活质量并减少环境足迹。就城市的宜居性而言,交通是直接影响公民的最频繁和最复杂的因素之一。特别地,寻找空置停车位的驾驶员是大气和声污染的不可忽略的来源。尽管一些城市在一些社区中安装了基于传感器的空置停车位检测器,但是这种方法的成本使其无法大规模使用。作为对城市环境中空车位检测问题实施可持续解决方案的一种方法,这项工作提倡将基于小型传感器的探测器的信息与通过广泛部署的视频监控摄像机网络获得的信息相融合。尤其是,本文重点介绍如何将视频分析作为基于数据融合的智慧城市解决方案的第一步。通过精心计划以复制真实场景的一组实验,通过对本地和全局视觉特征(单独或在特征级别融合)和不同分类器的关键比较,评估所提议系统的空置停车位检测成功率系统应用于任务。此外,该系统在不同复杂性的设置场景下进行了测试,实验结果表明,当使用少量高度准确的现场数据进行训练时,局部特征是最佳的,但当使用更多样本进行训练时,其局部性能优于其全球同行。外部车辆数据库。

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