Multi-modality Hierarchical Attention Networks for Defect Identification in Pipeline MFL Detection

Gang Wang, Ying Su, Mingfeng Lu, Rongsheng Chen, Xusheng Sun
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Abstract

Magnetic flux leakage (MFL) testing is widely used for acquiring MFL signals to detect pipeline defects, and data-driven approaches have been effectively investigated for MFL defect identification. However, with the increasing complexity of pipeline defects, current methods are constrained by the incomplete information from single modal data, which fails to meet detection requirements. Moreover, the incorporation of multimodal MFL data results in feature redundancy. Therefore, the Multi-Modality Hierarchical Attention Networks (MMHAN) are proposed for defect identification. Firstly, stacked residual blocks with Cross-Level Attention Module (CLAM) and multiscale 1D-CNNs with Multiscale Attention Module (MAM) are utilized to extract multiscale defect features. Secondly, the Multi-Modality Feature Enhancement Attention Module (MMFEAM) is developed to enhance critical defect features by leveraging correlations among multimodal features. Lastly, the Multi-Modality Feature Fusion Attention Module (MMFFAM) is designed to dynamically integrate multimodal features deeply, utilizing the consistency and complementarity of multimodal information. Extensive experiments were conducted on multimodal pipeline datasets to assess the proposed MMHAN. The experimental results demonstrate that MMHAN achieves a higher identification accuracy, validating its exceptional performance.
多模态分层注意力网络用于管道 MFL 检测中的缺陷识别
磁通量泄漏(MFL)测试被广泛用于获取磁通量泄漏信号以检测管道缺陷,数据驱动方法在磁通量泄漏缺陷识别方面得到了有效研究。然而,随着管道缺陷的复杂性不断增加,目前的方法受到单一模态数据信息不完整的限制,无法满足检测要求。此外,多模态 MFL 数据的加入会导致特征冗余。因此,本文提出了用于缺陷识别的多模态分层注意力网络(MMHAN)。首先,利用带有跨层注意模块(CLAM)的堆叠残留块和带有多尺度注意模块(MAM)的多尺度 1D-CNN 来提取多尺度缺陷特征。其次,开发了多模态特征增强注意模块(MMFEAM),利用多模态特征之间的相关性增强关键缺陷特征。最后,多模态特征融合注意模块(MMFFAM)旨在利用多模态信息的一致性和互补性,动态地深度整合多模态特征。为了评估所提出的 MMHAN,我们在多模态管道数据集上进行了广泛的实验。实验结果表明,MMHAN 实现了更高的识别准确率,验证了其卓越的性能。
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