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Automated Worker Activity Analysis in Indoor Environments for Direct-Work Rate Improvement from long sequences of RGB-D Images

机译:室内环境中的自动化工作者活动分析,从RGB-D图像的长序列直接工作率改进

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This paper presents a new method for activity analysis of construction workers using inexpensive RGB+depth sensors. This is an important task as no current workface assessment method can provide detailed and continuous information to help project managers identify bottlenecks affecting labors' productivity. Previous work using RGB-D images focuses on action recognition form short video sequences wherein only one action is represented within each video. Automating this analysis for long sequences of RGB-D images is challenging since the start and the end of each action is unknown, recognizing single actions is still challenging, and there are no datasets and validation metrics to evaluate algorithms. Given an input sequence of RGB-D images, our algorithm divides it into temporal segments and automatically classifies the observed actions. To do so, the algorithm first detects body postures in real-time. Then a Kernel Density Estimation Model (KDE) is trained to model classification scores from discriminatively-trained bag-of-poses action classifiers. Furthermore, a Hidden Markov Model (HMM) labels sequences of actions that are most discriminative. The performance of our model is tested on unprecedented datasets of actual drywall construction operations. Experimental results, in addition to the perceived benefits and limitations of the proposed method are discussed in detail.
机译:本文介绍了使用廉价RGB +深度传感器的建筑工人活动分析的新方法。这是一个重要的任务,因为没有当前的解决方案评估方法可以提供详细和持续的信息,以帮助项目经理识别影响劳动力的瓶颈的瓶颈。以前使用RGB-D图像的工作侧重于动作识别形式的短视频序列,其中仅在每个视频中表示一个动作。自动化此分析对于RGB-D图像的长序列是挑战,因为每个操作的开始和结尾未知,识别单个动作仍然具有挑战性,并且没有数据集和验证度量来评估算法。给定RGB-D图像的输入序列,我们的算法将其划分为时间片段,并自动对观察到的操作进行分类。为此,算法首先实时检测身体姿势。然后训练内核密度估计模型(KDE)以从鉴别地训练的姿势动作分类器模拟分类得分。此外,隐藏的马尔可夫模型(HMM)标签是最辨别的动作的序列。我们模型的性能在实际干墙施工操作的前所未有的数据集上进行了测试。实验结果,除了详细讨论所提出的方法的感知益处和局限性之外。

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