首页> 外文期刊>Automation in construction >Action recognition of earthmoving excavators based on sequential pattern analysis of visual features and operation cycles
【24h】

Action recognition of earthmoving excavators based on sequential pattern analysis of visual features and operation cycles

机译:基于视觉特征和运行周期顺序模式分析的地球移动挖掘机的动作识别

获取原文
获取原文并翻译 | 示例
           

摘要

This paper proposes a vision-based action recognition framework that considers the sequential working patterns of earthmoving excavators for automated cycle time and productivity analysis. The sequential patterns of visual features and operation cycles are incorporated into the action recognition framework, which includes three main processes: excavator detection, excavator tracking, and excavator action recognition. The first process uses a pre-trained detector to localize earthmoving excavators on sites from all of captured images. Next, the detection results are associated and the excavators are tracked by Tracking-Learning-Detection algorithm. Lastly, to recognize the operation types of the excavators, their sequential patterns of visual features and operation cycles are modeled and trained with a hybrid deep learning algorithm, i.e., Convolutional Neural Networks and Double-layer Long Short Term Memory. Three experiments were performed to validate the proposed framework and confirm the positive effects of sequential modeling: (1) an experiment without sequential pattern analysis, (2) an experiment with the sequential pattern analysis of visual features, and (3) an experiment with the sequential pattern analysis of visual features and operation cycles. In the experiments, the research team used a total of 72,365 images collected from actual earthmoving sites. The average accuracies of the excavator action recognition in the three cases were 79.8%, 90.9%, and 93.8% respectively. The results demonstrated the applicability of the proposed framework and the significant positive impacts of sequential pattern modeling on the recognition performance. This research contributed to the identification of critical elements that explain sequential working patterns and to the development of a novel vision-based action recognition framework. In addition, the findings of this study can help to automate cycle time analysis and productivity monitoring of earthmoving excavators.
机译:本文提出了一种基于视觉的动作识别框架,其考虑了用于自动循环时间和生产率分析的地球移动挖掘机的顺序工作模式。将视觉特征和操作周期的顺序模式结合到动作识别框架中,包括三个主要过程:挖掘机检测,挖掘机跟踪和挖掘机动作识别。第一个过程使用预先训练的探测器,将地球移动挖掘机本地从所有捕获的图像定位。接下来,通过跟踪 - 学习检测算法跟踪检测结果,挖掘机被跟踪。最后,为了识别挖掘机的操作类型,它们的视觉特征和操作周期的顺序模式是用混合深度学习算法,即卷积神经网络和双层长期内记忆训练的。进行三个实验以验证提出的框架,并确认顺序建模的正效应:(1)实验,无需顺序图案分析,(2)对视觉特征的顺序模式分析的实验,以及(3)实验序贯模式分析视觉特征和操作周期。在实验中,研究团队共收集了72,365张图像,从实际的地球移动网站收集。三种情况下挖掘机作用识别的平均准确性分别为79.8%,90.9%和93.8%。结果证明了提出的框架的适用性和连续模式建模对识别性能的显着积极影响。这项研究有助于识别解释顺序工作模式以及开发新的基于视觉动作识别框架的关键元素。此外,本研究的结果可以帮助自动化地球移动挖掘机的循环时间分析和生产率监测。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号