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AI Based Airplane Air Pollution Identification Architecture Using Satellite Imagery

机译:基于AI的飞机空气污染识别架构使用卫星图像

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Air Pollution has become an important problem for governments, researchers, and environmentalists over the last few decades. There are many primary transportation sources of air pollution including airplanes. Automatic airplane recognition in high-resolution satellite images has many applications. One of the applications using artificial intelligence and satellite imagery to design lean smart cities and work on primary sources of transportation air pollutions detection using high-resolution satellite imagery. With the help of satellite imagery and artificial intelligence model, airplane count and detection can be done with accuracy. This paper aims to analyze satellite images in order to help cities to have an idea about the number of planes in the city region. This paper presents web-based end to end aircraft identification framework based on F-RCNN. Utilizing artificial intelligence using deep learning is the state-of-the-art technique to identify the number of planes in a given region with the help of satellite images. The results of the self-made dataset show that the improved F-RCNN has better precision, detection accuracy and masking accuracy which improves the overall efficiency of pollution source identification project in the smart city. The proposed method tested on an image dataset including several airports and non-airports regions. The detection rate could reach approximately 92% accuracy and reduced computation time.
机译:在过去几十年中,空气污染已成为政府,研究人员和环保主义者的重要问题。有许多主要运输来源的空气污染,包括飞机。高分辨率卫星图像中的自动飞机识别有许多应用。利用高分辨率卫星图像设计人工智能和卫星图像的应用程序,以设计精益智能城市和运输空气污染的主要来源。借助卫星图像和人工智能模型,可以准确地完成飞机计数和检测。本文旨在分析卫星图像,以帮助城市了解城市地区的飞机数量。本文介绍了基于F-RCNN的基于Web的结束飞机识别框架。利用深度学习利用人工智能是最先进的技术,在卫星图像的帮助下识别给定区域中的飞机数量。自制数据集的结果表明,改进的F-RCNN具有更好的精度,检测精度和掩蔽精度,从而提高了智能城市污染源识别项目的总效率。所提出的方法在包括几个机场和非机场地区的图像数据集上进行了测试。检测率可以达到大约92%的精度和降低的计算时间。

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