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首页> 外文期刊>Journal of Intelligent Systems >Extreme Learning Machine-Based Traffic Incidents Detection with Domain Adaptation Transfer Learning
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Extreme Learning Machine-Based Traffic Incidents Detection with Domain Adaptation Transfer Learning

机译:基于极端的学习机的交通事故检测域适应转移学习

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摘要

Traffic incidents in big cities are increasing alongside economic growth, causing traffic delays and deteriorating road safety conditions. Thus, developing a universal freeway automatic incident detection (AID) algorithm is a task that took the interest of researchers. This paper presents a novel automatic traffic incident detection method based on the extreme learning machine (ELM) algorithm. Furthermore, transfer learning has recently gained popularity as it can successfully generalise information across multiple tasks. This paper aimed to develop a new approach for the traffic domain-based domain adaptation. The ELM was used as a classifier for detection, and target domain adaptation transfer ELM (TELM-TDA) was used as a tool to transfer knowledge between environments to benefit from past experiences. The detection performance was evaluated by common criteria including detection rate, false alarm rate, and others. To prove the efficiency of the proposed method, a comparison was first made between back-propagation neural network and ELM; then, another comparison was made between ELM and TELM-TDA.
机译:大城市交通事件与经济增长越来越大,造成交通延误和道路安全条件恶化。因此,开发通用的高速公路自动事件检测(AID)算法是一种采用研究人员兴趣的任务。本文提出了一种基于极端学习机(ELM)算法的新型自动流入射检测方法。此外,转移学习最近获得了普及,因为它可以在多个任务中成功地概括信息。本文旨在为基于流量域的域自适应开发一种新方法。 ELM用作检测的分类器,并且目标域适配转移ELM(TELM-TDA)用作转移环境之间的知识以受益于过去的经验。通过共同标准评估检测性能,包括检测率,误报率和其他标准。为了证明所提出的方法的效率,首先在背部传播神经网络和榆树之间进行比较;然后,在ELM和TELM-TDA之间进行另一种比较。

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