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Deep Learning based Pollution Detection in Intelligent Transportation System

机译:智能交通系统中基于深度学习的污染检测

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Vehicle pollution is a major concern in the current world. The technologies are improving day by day to reduce the pollution caused by the car. However, we are still lagging from addressing this critical issue completely. Therefore, road surveillance should be made stringent to capture those vehicles causing this serious problem. In this article, we have proposed a deep learning based framework which will identify the vehicle pollution from the images captured by the on-road surveillance camera. We have prepared an enriched large data set with significant variations which has been used in the training phase while deploying the deep model. The experiment has dealt with three base line Deep Learning CNN models, i.e. Inception-V3, MobileNet-V2 and InceptionResNet-V2. Transfer learning concept has been exploited to identify the on-road polluting vehicle. The experimental outcome has demonstrated the supremacy of the proposed approach in the traffic surveillance domain.
机译:车辆污染是当前世界中的主要关注点。这些技术正在日趋完善,以减少汽车造成的污染。但是,我们仍然无法完全解决这个关键问题。因此,应严格进行道路监视,以捕获引起严重问题的车辆。在本文中,我们提出了一个基于深度学习的框架,该框架将从道路监控摄像头捕获的图像中识别出车辆污染。我们准备了一个丰富的,具有重大变化的大型数据集,在部署深度模型时已将其用于训练阶段。该实验处理了三个基准深度学习CNN模型,即Inception-V3,MobileNet-V2和InceptionResNet-V2。转移学习的概念已被用来识别道路污染车辆。实验结果表明,该方法在交通监控领域具有绝对优势。

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