An active learning method for crack detection based on subset searching and weighted sampling

IF 5.7 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Zhengliang Xiang, Xuhui He, Yun-feng Zou, Haiquan Jing
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引用次数: 0

Abstract

Active learning is an important technology to solve the lack of data in crack detection model training. However, the sampling strategies of most existing active learning methods for crack detection are based on the uncertainty or representation of the samples, which cannot effectively balance the exploitation and exploration of active learning. To solve this problem, this study proposes an active learning method for crack detection based on subset searching and weighted sampling. First, a new active learning framework is established to successively search subsets with large uncertainty from the candidate dataset, and select training samples with large diversity from the subsets to update the crack detection model. Second, to realize the active learning process, a subset searching method based on sample relative error is proposed to adaptively select subsets with large uncertainty, and a weighted sampling method based on flow-based deep generative network is introduced to select training samples with large diversity form the subsets. Third, a termination criterion for active learning directly based on the prediction accuracy of the trained model is proposed to adaptively determine the maximum number of iterations. Finally, the proposed method is tested using two open-source crack datasets. The experimental comparison results on the Bridge Crack Library dataset show that the proposed method has higher calculation efficiency and prediction accuracy in crack detection than the uncertainty-based and representation-based active learning methods. The test results on the DeepCrack dataset show that the crack detection model trained by the proposed method has good transferability on different datasets with multi-scale concrete cracks and scenes.
基于子集搜索和加权抽样的主动学习裂纹检测方法
主动学习是解决裂纹检测模型训练中数据不足的重要技术。然而,现有的大多数裂纹检测主动学习方法的采样策略都是基于样本的不确定性或代表性,无法有效地平衡主动学习的开发和探索。为了解决这一问题,本研究提出了一种基于子集搜索和加权抽样的主动学习裂纹检测方法。首先,建立一个新的主动学习框架,从候选数据集中逐次搜索具有较大不确定性的子集,并从这些子集中选择具有较大多样性的训练样本更新裂纹检测模型;其次,为了实现主动学习过程,提出了一种基于样本相对误差的子集搜索方法来自适应选择具有较大不确定性的子集,并引入了一种基于流的深度生成网络的加权抽样方法来从子集中选择具有较大多样性的训练样本。第三,提出了直接基于训练模型预测精度的主动学习终止准则,自适应确定最大迭代次数;最后,使用两个开源的裂缝数据集对该方法进行了测试。在桥梁裂缝库数据集上的实验对比结果表明,与基于不确定性和表示的主动学习方法相比,该方法在裂缝检测中具有更高的计算效率和预测精度。在DeepCrack数据集上的测试结果表明,该方法训练的裂缝检测模型在不同数据集上具有良好的可移植性,具有多尺度混凝土裂缝和场景。
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来源期刊
CiteScore
12.80
自引率
12.10%
发文量
181
审稿时长
4.8 months
期刊介绍: Structural Health Monitoring is an international peer reviewed journal that publishes the highest quality original research that contain theoretical, analytical, and experimental investigations that advance the body of knowledge and its application in the discipline of structural health monitoring.
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