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Research on video classification method of key pollution sources based on deep learning

机译:基于深度学习的关键污染源视频分类方法研究

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摘要

China's environmental problems are not only related to the fundamental interests of the broad masses of the people, but also to China's national security and international image. At present, China's environmental protection work is facing a complex situation. Pollution sources can be divided into natural pollution sources and man-made pollution sources. Natural sources of pollution refer to places where nature releases harmful substances or causes harmful effects to the environment, such as active volcanoes. Man-made pollution source refers to the pollution source formed by human activities, and is also the main object of environmental protection research and control. Among the man-made pollution sources, air pollution sources, water pollution sources and soil pollution sources can be classified according to the main objects of pollution. Among them, air pollution sources and water pollution sources have the greatest impact on human life. Therefore, it has become an important subject worthy of in-depth discussion to take automatic and electronic measures for potential environmental pollution incidents, discover environmental pollution problems in time, reduce the probability of environmental pollution incidents, and even put some major environmental pollution incidents in their infancy. In this paper, deep learning method is used to classify the existing key pollution source video. Water pollution experiments show that the accuracy of video counting reaches 93.1%, which is better than other video processing schemes. The operation time of the system reaches acceptable range, and a solution to meet the real-time requirement is put forward. (C) 2019 Published by Elsevier Inc.
机译:中国的环境问题不仅关系到广大人民的根本利益,也关系到中国的国家安全和国际形象。当前,中国的环境保护工作面临着复杂的形势。污染源可分为自然污染源和人为污染源。天然污染源是指自然释放有害物质或对环境造成有害影响的地方,例如活火山。人为污染源是指人类活动形成的污染源,也是环境保护研究与控制的主要对象。在人为污染源中,空气污染源,水污染源和土壤污染源可根据污染的主要对象进行分类。其中,空气污染源和水污染源对人类生活的影响最大。因此,针对潜在的环境污染事件采取自动和电子措施,及时发现环境污染问题,降低环境污染事件发生的概率,甚至将一些重大的环境污染事件置于环境中,已经成为值得深入讨论的重要课题。他们的婴儿期。本文采用深度学习方法对现有关键污染源视频进行分类。水污染实验表明,视频计数的准确性达到93.1%,优于其他视频处理方案。系统的运行时间达到可接受的范围,并提出了满足实时性要求的解决方案。 (C)2019由Elsevier Inc.发布

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