论文标题
使用转移学习通过卷积神经网络检测屋顶秋天的危害
Roof fall hazard detection with convolutional neural networks using transfer learning
论文作者
论文摘要
由于地质条件而导致的屋顶跌落是采矿和隧道行业中的主要安全危害,导致工作时间,伤害和死亡人数损失。美国东部和中西部的几个大开的石灰石矿山造成高水平压力引起的屋顶掉落问题。这种类型的屋顶掉落的典型危害管理方法在很大程度上取决于视觉检查和专家知识。在这项研究中,我们提出了一个基于人工智能(AI)的系统,用于检测屋顶掉落造成高水平应力引起的损害。我们使用描述危险和非危害屋顶条件的图像来开发卷积神经网络,以自主检测有害屋顶条件。为了补偿有限的输入数据,我们采用了转移学习方法。在转移学习中,已经训练的网络用作类似领域中分类的起点。结果证实,这种方法可以很好地将屋顶条件归类为危险或安全的,因此达到86%的统计准确性。但是,仅准确性不足以确保可靠的危害管理系统。当了解网络使用的功能时,系统限制和可靠性将提高。因此,我们使用了一种称为综合梯度的深度学习解释技术来识别每个图像中的重要地质特征以进行预测。对综合梯度的分析表明,系统模仿了专家对屋顶跌落危险检测的判断。本文开发的系统表明,在地质危害管理中进行深度学习以补充人类专家的潜力,并可能成为自主隧道操作的重要组成部分,在这种情况下,危害识别在很大程度上取决于专家知识。
Roof falls due to geological conditions are major safety hazards in mining and tunneling industries, causing lost work times, injuries, and fatalities. Several large-opening limestone mines in the Eastern and Midwestern United States have roof fall problems caused by high horizontal stresses. The typical hazard management approach for this type of roof fall hazard relies heavily on visual inspections and expert knowledge. In this study, we propose an artificial intelligence (AI) based system for the detection roof fall hazards caused by high horizontal stresses. We use images depicting hazardous and non-hazardous roof conditions to develop a convolutional neural network for autonomous detection of hazardous roof conditions. To compensate for limited input data, we utilize a transfer learning approach. In transfer learning, an already-trained network is used as a starting point for classification in a similar domain. Results confirm that this approach works well for classifying roof conditions as hazardous or safe, achieving a statistical accuracy of 86%. However, accuracy alone is not enough to ensure a reliable hazard management system. System constraints and reliability are improved when the features being used by the network are understood. Therefore, we used a deep learning interpretation technique called integrated gradients to identify the important geologic features in each image for prediction. The analysis of integrated gradients shows that the system mimics expert judgment on roof fall hazard detection. The system developed in this paper demonstrates the potential of deep learning in geological hazard management to complement human experts, and likely to become an essential part of autonomous tunneling operations in those cases where hazard identification heavily depends on expert knowledge.