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引用次数: 0
摘要
在当今以深度学习为主导的时代,突发公共事件的实时分类是一个重要的研究领域。然而,现有的方法往往不能全面考虑时间和空间方面。本研究介绍的 GEDNAS 是一种结合了无序卷积神经网络(DCNN)、门控递归单元(GRU)和神经结构搜索(NAS)的新型模型,旨在解决这些局限性。GEDNAS 利用 DCNN 捕捉局部时空特征,整合 GRU 进行时间序列建模,并利用 NAS 进行整体结构优化。该方法大大提高了实时公共应急分类性能,展示了其在应对实时场景时的效率和准确性,并为应急响应工作提供了有力支持。这项研究为公共安全引入了一种创新解决方案,推动了深度学习在应急管理中的应用,启发了实时分类模型的设计,最终提升了整体社会安全。
Real-Time Classification Model of Public Emergencies Using Fusion Expansion Network
In today's deep learning-dominated era, real-time classification of public emergencies is a critical research area. Existing methods, however, often fall short in considering both temporal and spatial aspects comprehensively. This study introduces GEDNAS, a novel model that combines atrous convolutional neural network (DCNN), gated recurrent unit (GRU), and neural structure search (NAS) to address these limitations. GEDNAS utilizes DCNN to capture local spatio-temporal features, integrates GRU for time series modeling, and employs NAS for overall structural optimization. The approach significantly enhances real-time public emergency classification performance, showcasing its efficiency and accuracy in responding to real-time scenarios and providing robust support for emergency response efforts. This research introduces an innovative solution for public safety, advancing the application of deep learning in emergency management and inspiring the design of real-time classification models, ultimately enhancing overall societal safety.