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首页> 外文期刊>Journal of Civil Engineering and Management >ENHANCING ACTION RECOGNITION OF CONSTRUCTION WORKERS USING DATA-DRIVEN SCENE PARSING
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ENHANCING ACTION RECOGNITION OF CONSTRUCTION WORKERS USING DATA-DRIVEN SCENE PARSING

机译:利用数据驱动的场景解析增强建筑工人的行动识别

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Vision-based action recognition of construction workers has attracted increasing attention for its diverse applications. Though state-of-the-art performances have been achieved using spatial-temporal features in previous studies, considerable challenges remain in the context of cluttered and dynamic construction sites. Considering that workers actions are closely related to various construction entities, this paper proposes a novel system on enhancing action recognition using semantic information. A data-driven scene parsing method, named label transfer, is adopted to recognize construction entities in the entire scene. A probabilistic model of actions with context is established. Worker actions are first classified using dense trajectories, and then improved by construction object recognition. The experimental results on a comprehensive dataset show that the proposed system outperforms the baseline algorithm by 10.5%. The paper provides a new solution to integrate semantic information globally, other than conventional object detection, which can only depict local context. The proposed system is especially suitable for construction sites, where semantic information is rich from local objects to global surroundings. As compared to other methods using object detection to integrate context information, it is easy to implement, requiring no tedious training or parameter tuning, and is scalable to the number of recognizable objects.
机译:建筑工人基于视觉的动作识别因其多样的应用而引起了越来越多的关注。尽管在先前的研究中已经使用时空特征实现了最先进的性能,但是在混乱而又动态的建筑工地的背景下,仍然存在相当大的挑战。考虑到工人的动作与各种建筑实体密切相关,本文提出了一种利用语义信息增强动作识别的新系统。采用数据驱动的场景解析方法,称为标签传递,以识别整个场景中的构造实体。建立了具有上下文的动作的概率模型。首先使用密集的轨迹对工人的动作进行分类,然后通过构造对象识别对其进行改进。在综合数据集上的实验结果表明,所提出的系统比基线算法的性能高出10.5%。本文提供了一种新的解决方案,以全局方式集成语义信息,而不是仅能描述局部上下文的常规对象检测。所提出的系统特别适用于语义信息从本地对象到全球环境的丰富建筑现场。与使用对象检测来集成上下文信息的其他方法相比,该方法易于实现,不需要繁琐的训练或参数调整,并且可扩展到可识别对象的数量。

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