The State Key Lab of Precision Measuring Technology and Instruments, Tianjin University, Tianjin 300072, China.
Sensors (Basel). 2020 Mar 16;20(6):1650. doi: 10.3390/s20061650.
Most of the current object detection approaches deliver competitive results with an assumption that a large number of labeled data are generally available and can be fed into a deep network at once. However, due to expensive labeling efforts, it is difficult to deploy the object detection systems into more complex and challenging real-world environments, especially for defect detection in real industries. In order to reduce the labeling efforts, this study proposes an active learning framework for defect detection. First, an Uncertainty Sampling is proposed to produce the candidate list for annotation. Uncertain images can provide more informative knowledge for the learning process. Then, an Average Margin method is designed to set the sampling scale for each defect category. In addition, an iterative pattern of training and selection is adopted to train an effective detection model. Extensive experiments demonstrate that the proposed method can render the required performance with fewer labeled data.
大多数当前的目标检测方法都能提供有竞争力的结果,前提是大量的标记数据通常是可用的,并且可以一次输入到深度网络中。然而,由于标记工作的昂贵,将目标检测系统部署到更复杂和具有挑战性的真实环境中是困难的,特别是对于实际行业中的缺陷检测。为了减少标记工作,本研究提出了一种用于缺陷检测的主动学习框架。首先,提出了一种不确定性抽样来生成注释的候选列表。不确定的图像可以为学习过程提供更有价值的知识。然后,设计了一种平均裕度方法来为每个缺陷类别设置抽样比例。此外,采用了一种训练和选择的迭代模式来训练有效的检测模型。广泛的实验表明,该方法可以用更少的标记数据达到所需的性能。