A Hierarchical Transfer-Generative Framework for Automating Multianalytical Tasks in Rail Surface Defect Inspection

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

2 Scopus Citations
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Detail(s)

Original languageEnglish
Pages (from-to)21513-21526
Journal / PublicationIEEE Internet of Things Journal
Volume11
Issue number12
Online published8 Mar 2024
Publication statusPublished - 15 Jun 2024

Abstract

Rail surface inspection is crucial for ensuring the safety and longevity of rail transport systems, grapples with the challenges posed by the scarcity of defective samples. Additionally, contemporary techniques in this domain typically fail to concurrently identify and localize defects at both image level and pixel levels. Addressing these intricacies, we present a hierarchical transfer-generative framework, the HTg-Net. This innovative framework is geared towards the automation and enhancement of multi-analytical tasks in rail surface inspection. The HTg-Net architecture synergistically melds two pivotal subnetworks: (1) the memory-guided generation subnetwork (MGN), which is endowed with a cutting-edge memory mechanism. This mechanism adeptly captures and recalls the typical patterns observed in rail images, facilitating the detection of anomalies or deviations; (2) the attention-focused segmentation subnetwork (ASN) is fortified with a gated attention mechanism and hierarchical weights transferred from MGN, enabling parallel feature extraction and enhancing defect localization. Rigorous evaluations of HTg-Net on three datasets elucidate its superior efficiency and performance over prevailing benchmarks, positioning it as an advanced solution for the comprehensive inspection of rail surface defects. © 2024 IEEE

Research Area(s)

  • Deep learning, Defect detection, defect inspection, Feature extraction, Inspection, machine-vision analytics, rail transport safety, Rails, Surface morphology, system health management, Task analysis, Training