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基于深度学习的事件检测系统在隧道中应用 被引量:3

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摘要 高速公路视频监控管理中,高效、准确的视频采集与分析技术是关键,本文主要围绕视频事件检测技术展开分析。本文首先阐述基于深度学习的事件检测系统的提出,并围绕韶赣高速公路工程,探讨基于深度学习的事件检测系统总体设计方案及其在隧道中应用情况,以期可供参考。
作者 姚良金
出处 《低碳世界》 2021年第7期192-193,210,共3页 Low Carbon World
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